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   <news:title>動的品揃え最適化の最適方策（An Optimal Policy for Dynamic Assortment Planning Under Uncapacitated Multinomial Logit Models）</news:title>
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   <news:title>属性推定攻撃に対する実践的防御法：AttriGuardの要点と経営的含意 (AttriGuard: A Practical Defense Against Attribute Inference Attacks via Adversarial Machine Learning)</news:title>
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   <news:title>Zero-Shot Dialog Generation with Cross-Domain Latent Actions（Zero-Shot Dialog Generation with Cross-Domain Latent Actions）</news:title>
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   <news:title>述語と項を同時に予測するニューラル意味役割付与（Jointly Predicting Predicates and Arguments in Neural Semantic Role Labeling）</news:title>
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   <news:title>大学物理教育における学習の公平性を問う（Equity in College Physics Student Learning: a Critical Quantitative Intersectionality Investigation）</news:title>
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   <news:title>セマンティックセグメンテーションにおける畳み込みCRFの実用化（Convolutional CRFs for Semantic Segmentation）</news:title>
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   <news:genres>Blog</news:genres>
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    <news:language>ja</news:language>
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   <news:title>非線形計量学習の滑らかな合成手法（Nonlinear Metric Learning through Geodesic Interpolation within Lie Groups）</news:title>
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   <news:genres>Blog</news:genres>
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   <news:title>リモート視線推定のための眼領域ランドマーク学習（Learning to Find Eye Region Landmarks for Remote Gaze Estimation in Unconstrained Settings）</news:title>
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   <news:title>DropoutとHamiltonian Monte Carloによる予測不確実性の改善（Improving Predictive Uncertainty Estimation using Dropout – Hamiltonian Monte Carlo）</news:title>
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   <news:title>単純で効果的なモデルベースの変数重要度指標（A Simple and Effective Model-Based Variable Importance Measure）</news:title>
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   <news:genres>Blog</news:genres>
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   <news:title>生まれ変わるニューラルネットワーク（Born-Again Neural Networks）</news:title>
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   <news:title>クラウドを使った増分学習フレームワーク（Incremental Learning Framework Using Cloud Computing）</news:title>
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    <news:language>ja</news:language>
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   <news:title>強化学習と認知アーキテクチャによるリアルタイム再スケジューリング（Generating Rescheduling Knowledge using Reinforcement Learning in a Cognitive Architecture）</news:title>
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   <news:genres>Blog</news:genres>
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   <news:title>SOARを用いたリアルタイム再スケジューリングの認知的アプローチ（A Cognitive Approach to Real-time Rescheduling using SOAR-RL）</news:title>
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   <news:genres>Blog</news:genres>
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   <news:title>拡張されたコンテンツベースの特徴エンジニアリングパイプライン（EXTENDED PIPELINE FOR CONTENT-BASED FEATURE ENGINEERING IN MUSIC GENRE RECOGNITION）</news:title>
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   <news:title>同意率初期化最尤推定器による分類器アンサンブルの統合（Agreement Rate Initialized Maximum Likelihood Estimator for Ensemble Classifier Aggregation and Its Application in Brain-Computer Interface）</news:title>
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    <news:language>ja</news:language>
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   <news:title>EEGを用いた運転者の眠気推定とEBMAL（Enhanced Batch-Mode Active Learning）</news:title>
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   <news:title>オフラインBCIキャリブレーションのための能動半教師付き転移学習（Active Semi-supervised Transfer Learning (ASTL) for Offline BCI Calibration）</news:title>
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   <news:genres>Blog</news:genres>
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    <news:language>ja</news:language>
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   <news:title>強化学習のハイパーパラメータ自動設定（Towards Autonomous Reinforcement Learning: Automatic Setting of Hyper-parameters using Bayesian Optimization）</news:title>
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   <news:genres>Blog</news:genres>
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    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>外れ値は協調学習を台無しにするか（Do Outliers Ruin Collaboration?）</news:title>
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   <news:genres>Blog</news:genres>
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  <news:news>
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    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>回帰問題のプール型逐次能動学習（Pool-Based Sequential Active Learning for Regression）</news:title>
   <news:publication_date>2026-05-03T23:03:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>物体中心とシーン中心のCNN特徴の相補性がもたらす変化（Exploring object-centric and scene-centric CNN features and their complementarity for human rights violations recognition in images）</news:title>
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   <news:genres>Blog</news:genres>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>多様性を備えた自動運転データセット BDD100K（BDD100K: A Diverse Driving Dataset for Heterogeneous Multitask Learning）</news:title>
   <news:publication_date>2026-05-03T23:00:57Z</news:publication_date>
   <news:genres>Blog</news:genres>
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  <lastmod>2026-05-03T23:00:49Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>ガウシアン混合ラテントベクトル文法（Gaussian Mixture Latent Vector Grammars）</news:title>
   <news:publication_date>2026-05-03T23:00:49Z</news:publication_date>
   <news:genres>Blog</news:genres>
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  <lastmod>2026-05-03T23:00:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>専門家の選好で学ぶタスク転移（Task Transfer by Preference-Based Cost Learning）</news:title>
   <news:publication_date>2026-05-03T23:00:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
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  <lastmod>2026-05-03T22:08:28Z</lastmod>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>方向認識型空間コンテキスト特徴による影検出と除去（Direction-aware Spatial Context Features for Shadow Detection and Removal）</news:title>
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   <news:genres>Blog</news:genres>
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    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>AdvEntuRe: 知識誘導型生成を用いたテキスト含意の敵対的学習（AdvEntuRe: Adversarial Training for Textual Entailment with Knowledge-Guided Examples）</news:title>
   <news:publication_date>2026-05-03T22:00:34Z</news:publication_date>
   <news:genres>Blog</news:genres>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>一般相対論的磁気流体力学シミュレーションによる相対論的ジェットの多波長観測（Multiwavelength Observations of Relativistic Jets from General Relativistic Magnetohydrodynamic Simulations）</news:title>
   <news:publication_date>2026-05-03T22:00:04Z</news:publication_date>
   <news:genres>Blog</news:genres>
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  <lastmod>2026-05-03T21:59:49Z</lastmod>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>中間層にある構造的なargmaxを逆伝播する手法：SPIGOTの実用的意義（Backpropagating through Structured Argmax using a SPIGOT）</news:title>
   <news:publication_date>2026-05-03T21:59:49Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686222</loc>
  <lastmod>2026-05-03T21:58:37Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>明瞭化質問のランク付けで対話の質を上げる（Learning to Ask Good Questions: Ranking Clarification Questions using Neural Expected Value of Perfect Information）</news:title>
   <news:publication_date>2026-05-03T21:58:37Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686220</loc>
  <lastmod>2026-05-03T21:57:59Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>学習によって変わる「知覚」の神経基盤（Neural correlates of learned categorical perception）</news:title>
   <news:publication_date>2026-05-03T21:57:59Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686218</loc>
  <lastmod>2026-05-03T21:06:53Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ランダム性で敵対的転送性を壊す（Breaking Transferability of Adversarial Samples with Randomness）</news:title>
   <news:publication_date>2026-05-03T21:06:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686216</loc>
  <lastmod>2026-05-03T21:06:40Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>硬い粒子の運動における初期境界値問題 II：非一意性に関する研究 (On the Initial Boundary-Value Problem in the Kinetic Theory of Hard Particles II: Non-uniqueness)</news:title>
   <news:publication_date>2026-05-03T21:06:40Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686214</loc>
  <lastmod>2026-05-03T21:06:10Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Twitterユーザーの位置推定を深層マルチビュー学習で行う（Twitter User Geolocation using Deep Multiview Learning）</news:title>
   <news:publication_date>2026-05-03T21:06:10Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686212</loc>
  <lastmod>2026-05-03T21:05:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>欠測値を含むロジスティック回帰の統一的扱い（Logistic Regression with Missing Covariates – Parameter Estimation, Model Selection and Prediction within a Joint-Modeling Framework）</news:title>
   <news:publication_date>2026-05-03T21:05:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686210</loc>
  <lastmod>2026-05-03T21:05:21Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>高速で確率的なディフェオモルフィック画像登録の無監督学習（Unsupervised Learning for Fast Probabilistic Diffeomorphic Registration）</news:title>
   <news:publication_date>2026-05-03T21:05:21Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686208</loc>
  <lastmod>2026-05-03T21:05:07Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>二重埋め込みとCNNによるアスペクト抽出（Double Embeddings and CNN-based Sequence Labeling for Aspect Extraction）</news:title>
   <news:publication_date>2026-05-03T21:05:07Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686206</loc>
  <lastmod>2026-05-03T21:04:41Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>テキスト領域で「問い合わせ生成」を行う手法の要点（Textual Membership Queries）</news:title>
   <news:publication_date>2026-05-03T21:04:41Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686204</loc>
  <lastmod>2026-05-03T20:13:22Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>時系列フローフィールドによる多人数姿勢追跡の実装的意義（JointFlow: Temporal Flow Fields for Multi-Person Pose Tracking）</news:title>
   <news:publication_date>2026-05-03T20:13:22Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686202</loc>
  <lastmod>2026-05-03T20:12:35Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ブール代数に基づく確率的テンソル分解の実装と有用性（TensOrMachine: Probabilistic Boolean Tensor Decomposition）</news:title>
   <news:publication_date>2026-05-03T20:12:35Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686200</loc>
  <lastmod>2026-05-03T20:12:24Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>τ崩壊による二中間子生成の体系化（τ −→ντM1M2, with M1, M2 pseudoscalar or vector mesons）</news:title>
   <news:publication_date>2026-05-03T20:12:24Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686198</loc>
  <lastmod>2026-05-03T20:12:15Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>拡張畳み込みを見直す：弱教師あり・半教師ありセマンティックセグメンテーションへの単純アプローチ（Revisiting Dilated Convolution: A Simple Approach for Weakly- and Semi-Supervised Semantic Segmentation）</news:title>
   <news:publication_date>2026-05-03T20:12:15Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686196</loc>
  <lastmod>2026-05-03T20:12:07Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>誤差境界条件に適応するERMと確率近似の高速収束（Fast Rates of ERM and Stochastic Approximation）</news:title>
   <news:publication_date>2026-05-03T20:12:07Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686194</loc>
  <lastmod>2026-05-03T20:11:52Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>統計モデルと意味モデルを組み合わせた多文書要約（Using Statistical and Semantic Models for Multi-Document Summarization）</news:title>
   <news:publication_date>2026-05-03T20:11:52Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686192</loc>
  <lastmod>2026-05-03T19:20:36Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>学習によって生じるカテゴリ知覚（Learning-induced categorical perception in a neural network model）</news:title>
   <news:publication_date>2026-05-03T19:20:36Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686190</loc>
  <lastmod>2026-05-03T19:19:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>タンパク質結晶化X線画像の分類にCNNを使う効能（Classification of Protein Crystallization X-Ray Images Using Major Convolutional Neural Network Architectures）</news:title>
   <news:publication_date>2026-05-03T19:19:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686188</loc>
  <lastmod>2026-05-03T19:19:31Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ContextNetによる文脈と詳細の両立で実用化するリアルタイム意味分割（ContextNet: Exploring Context and Detail for Semantic Segmentation in Real-time）</news:title>
   <news:publication_date>2026-05-03T19:19:31Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686186</loc>
  <lastmod>2026-05-03T19:18:57Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-03T19:18:57Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686184</loc>
  <lastmod>2026-05-03T19:18:43Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>銀河団中心における最も明るい銀河の協調的組み立て（Coordinated Assembly of Brightest Cluster Galaxies）</news:title>
   <news:publication_date>2026-05-03T19:18:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686182</loc>
  <lastmod>2026-05-03T19:18:20Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ボリューム型深層畳み込みニューラルネットワークによるダークマターハロー模擬カタログ生成（A volumetric deep Convolutional Neural Network for simulation of mock dark matter halo catalogues）</news:title>
   <news:publication_date>2026-05-03T19:18:20Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686180</loc>
  <lastmod>2026-05-03T19:17:55Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>オンラインバンディット線形最適化の基礎とSCRiBLe（ONLINE BANDIT LINEAR OPTIMIZATION: A STUDY）</news:title>
   <news:publication_date>2026-05-03T19:17:55Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686178</loc>
  <lastmod>2026-05-03T18:26:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>インタラクティブ強化学習における既存知識の動的再利用（Interactive Reinforcement Learning with Dynamic Reuse of Prior Knowledge）</news:title>
   <news:publication_date>2026-05-03T18:26:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686176</loc>
  <lastmod>2026-05-03T18:26:06Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>地下フォーラムの私的やり取りを予測する方法（Under the Underground: Predicting Private Interactions in Underground Forums）</news:title>
   <news:publication_date>2026-05-03T18:26:06Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686174</loc>
  <lastmod>2026-05-03T18:25:58Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-03T18:25:58Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686172</loc>
  <lastmod>2026-05-03T18:24:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>エネルギー収穫型IoTにおけるアクセス制御とバッテリ予測の強化学習的統合（Reinforcement Learning based Multi-Access Control and Battery Prediction with Energy Harvesting in IoT Systems）</news:title>
   <news:publication_date>2026-05-03T18:24:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686170</loc>
  <lastmod>2026-05-03T18:24:43Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>継続的インテグレーションの設定を静的に検証する（Statically Verifying Continuous Integration Configurations）</news:title>
   <news:publication_date>2026-05-03T18:24:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686168</loc>
  <lastmod>2026-05-03T18:24:34Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-03T18:24:34Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686166</loc>
  <lastmod>2026-05-03T18:24:19Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Pocket Game Jams：学校における構成主義的アプローチ（Pocket Game Jams: a Constructionist Approach at Schools）</news:title>
   <news:publication_date>2026-05-03T18:24:19Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686164</loc>
  <lastmod>2026-05-03T17:32:45Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ゲームジャムが育む計算思考と非公式学習の力（THE ROLE OF GAME JAMS IN DEVELOPING INFORMAL LEARNING OF COMPUTATIONAL THINKING: A CROSS-EUROPEAN CASE STUDY）</news:title>
   <news:publication_date>2026-05-03T17:32:45Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686162</loc>
  <lastmod>2026-05-03T17:32:37Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ゲーム開発を通じた学習とジェンダー差（Game Development-Based Learning Experience: Gender Differences in Game Design）</news:title>
   <news:publication_date>2026-05-03T17:32:37Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686160</loc>
  <lastmod>2026-05-03T17:31:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>手術中データ埋め込み解析による急性腎障害予測の向上（Improved Predictive Models for Acute Kidney Injury with IDEAs: Intraoperative Data Embedded Analytics）</news:title>
   <news:publication_date>2026-05-03T17:31:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686158</loc>
  <lastmod>2026-05-03T17:31:42Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>小マゼラン雲の空間分解星形成履歴の再構築（The spatially resolved star formation history of the main body of the Small Magellanic Cloud）</news:title>
   <news:publication_date>2026-05-03T17:31:42Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686156</loc>
  <lastmod>2026-05-03T17:31:29Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>自発性電位間隔の分布に関して（On the distribution of spontaneous potentials intervals in nervous transmission）</news:title>
   <news:publication_date>2026-05-03T17:31:29Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686154</loc>
  <lastmod>2026-05-03T17:31:15Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-03T17:31:15Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686152</loc>
  <lastmod>2026-05-03T16:40:33Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>交通標識検出におけるカプセルネットワークの提案（Novel Deep Learning Model for Traffic Sign Detection Using Capsule Networks）</news:title>
   <news:publication_date>2026-05-03T16:40:33Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686150</loc>
  <lastmod>2026-05-03T16:40:23Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>正規化ワッサースタイン距離による越境文書検索（Cross-lingual Document Retrieval using Regularized Wasserstein Distance）</news:title>
   <news:publication_date>2026-05-03T16:40:23Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686148</loc>
  <lastmod>2026-05-03T16:40:09Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>公共行政研究における機械学習と組織評判の計測（Machine Learning for Public Administration Research, with Application to Organizational Reputation）</news:title>
   <news:publication_date>2026-05-03T16:40:09Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686146</loc>
  <lastmod>2026-05-03T16:39:49Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>感覚運動的視点から見る視覚特徴の基底付け（A Sensorimotor Perspective on Grounding the Semantic of Simple Visual Features）</news:title>
   <news:publication_date>2026-05-03T16:39:49Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686144</loc>
  <lastmod>2026-05-03T16:39:24Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>部分観測マルコフ決定過程における深い階層型強化学習（Deep Hierarchical Reinforcement Learning Algorithm in Partially Observable Markov Decision Processes）</news:title>
   <news:publication_date>2026-05-03T16:39:24Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686142</loc>
  <lastmod>2026-05-03T16:39:04Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>反復学習で支援する対話型画像分割（Iteratively Trained Interactive Segmentation）</news:title>
   <news:publication_date>2026-05-03T16:39:04Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686140</loc>
  <lastmod>2026-05-03T16:38:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>PAD-Netによる同時深度推定とシーン解析の統合（PAD-Net: Multi-Tasks Guided Prediction-and-Distillation Network for Simultaneous Depth Estimation and Scene Parsing）</news:title>
   <news:publication_date>2026-05-03T16:38:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686138</loc>
  <lastmod>2026-05-03T15:47:49Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>力覚相互作用スキルの評価を学習する手法（Learning Movement Assessment Primitives for Force Interaction Skills）</news:title>
   <news:publication_date>2026-05-03T15:47:49Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686136</loc>
  <lastmod>2026-05-03T15:39:38Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>注意機構による弱教師ありドメイン特化色名推定（Weakly Supervised Domain-Specific Color Naming Based on Attention）</news:title>
   <news:publication_date>2026-05-03T15:39:38Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686134</loc>
  <lastmod>2026-05-03T15:39:19Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>画像を活用して動画認識を強化する階層型生成対抗ネットワーク（Exploiting Images for Video Recognition with Hierarchical Generative Adversarial Networks）</news:title>
   <news:publication_date>2026-05-03T15:39:19Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686132</loc>
  <lastmod>2026-05-03T15:38:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>女性ティーンとコーディング：性差に配慮した創造的学習環境（Female Teenagers and Coding: Create Gender Sensitive and Creative Learning Environments）</news:title>
   <news:publication_date>2026-05-03T15:38:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686130</loc>
  <lastmod>2026-05-03T15:38:14Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Pocket Codeを用いたゲームデザインが学校の学びを変える（Game Design with Pocket Code: Providing a Constructionist Environment for Girls in the School Context）</news:title>
   <news:publication_date>2026-05-03T15:38:14Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686128</loc>
  <lastmod>2026-05-03T15:38:00Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>超信頼・低遅延V2V通信におけるフェデレーテッド学習の実装と意義（Federated Learning for Ultra-Reliable Low-Latency V2V Communications）</news:title>
   <news:publication_date>2026-05-03T15:38:00Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686126</loc>
  <lastmod>2026-05-03T15:37:50Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ML搭載自律システムのための定量的k投影カバレッジ（Quantitative Projection Coverage for Testing ML-enabled Autonomous Systems）</news:title>
   <news:publication_date>2026-05-03T15:37:50Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686124</loc>
  <lastmod>2026-05-03T14:46:16Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>局所銀河群の若い矮小銀河レオAにおける統合光解析と色等級図の比較（Integrated-light analyses vs. colour-magnitude diagrams - II. Leo A, an extremely young dwarf in the Local Group）</news:title>
   <news:publication_date>2026-05-03T14:46:16Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686122</loc>
  <lastmod>2026-05-03T14:44:53Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>スケーラブルなパターンベース最適化への道（Towards scalable pattern-based optimization for dense linear algebra）</news:title>
   <news:publication_date>2026-05-03T14:44:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686120</loc>
  <lastmod>2026-05-03T14:44:40Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>少数の例から細かなカテゴリを識別する仕組みを作る（Piecewise classifier mappings: Learning fine-grained learners for novel categories with few examples）</news:title>
   <news:publication_date>2026-05-03T14:44:40Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686118</loc>
  <lastmod>2026-05-03T14:44:31Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>機械学習を使ったO(N)ソートアルゴリズム（An O(N) Sorting Algorithm: Machine Learning Sort）</news:title>
   <news:publication_date>2026-05-03T14:44:31Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686116</loc>
  <lastmod>2026-05-03T14:44:00Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>空中映像におけるエイ（stingray）検出と合成データ増強（Stingray Detection of Aerial Images Using Augmented Training Images）</news:title>
   <news:publication_date>2026-05-03T14:44:00Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686114</loc>
  <lastmod>2026-05-03T14:43:51Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>文法と強化学習を活用したニューラルプログラム合成（LEVERAGING GRAMMAR AND REINFORCEMENT LEARNING FOR NEURAL PROGRAM SYNTHESIS）</news:title>
   <news:publication_date>2026-05-03T14:43:51Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686112</loc>
  <lastmod>2026-05-03T14:43:37Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ニューラルによるオープン情報抽出（Neural Open Information Extraction）</news:title>
   <news:publication_date>2026-05-03T14:43:37Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686110</loc>
  <lastmod>2026-05-03T13:52:20Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>組み込み機器における深層学習モデルの適応的選択（Adaptive Selection of Deep Learning Models on Embedded Systems）</news:title>
   <news:publication_date>2026-05-03T13:52:20Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686108</loc>
  <lastmod>2026-05-03T13:42:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>PALM: データストリーム回帰のためのハイパープレーン逐次構築（PALM: An Incremental Construction of Hyperplanes for Data Stream Regression）</news:title>
   <news:publication_date>2026-05-03T13:42:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686106</loc>
  <lastmod>2026-05-03T13:41:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>凸最適化に基づくスペクトルクラスタリング（Convex Programming Based Spectral Clustering）</news:title>
   <news:publication_date>2026-05-03T13:41:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686104</loc>
  <lastmod>2026-05-03T13:41:01Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>分散Deep Forestと大規模不正検知への応用（Distributed Deep Forest and its Application to Automatic Detection of Cash-out Fraud）</news:title>
   <news:publication_date>2026-05-03T13:41:01Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686102</loc>
  <lastmod>2026-05-03T13:40:46Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>大規模非滑らか凸最適化のためのランダム化平滑化SVRG（Randomized Smoothing SVRG for Large-scale Nonsmooth Convex Optimization）</news:title>
   <news:publication_date>2026-05-03T13:40:46Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686100</loc>
  <lastmod>2026-05-03T13:40:37Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>リスク志向マルコフ意思決定過程の確率近似法（Stochastic approximation for risk-aware Markov decision processes）</news:title>
   <news:publication_date>2026-05-03T13:40:37Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686098</loc>
  <lastmod>2026-05-03T13:40:23Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>バイリンガル資源が乏しい状況におけるニューラル機械翻訳：深層マルチタスク学習アプローチ（Neural Machine Translation for Bilingually Scarce Scenarios: A Deep Multi-task Learning Approach）</news:title>
   <news:publication_date>2026-05-03T13:40:23Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686096</loc>
  <lastmod>2026-05-03T12:49:04Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>グラフレットとnode2vec/struc2vecの比較：ネットワークアラインメントにおける性能検証（Graphlets versus node2vec and struc2vec in the task of network alignment）</news:title>
   <news:publication_date>2026-05-03T12:49:04Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686094</loc>
  <lastmod>2026-05-03T12:48:50Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>家庭用給湯器群を使った需要応答の実運用手法（Trajectory Tracking with an Aggregation of Domestic Hot Water Heaters: Combining Model-Based and Model-Free Control in a Commercial Deployment）</news:title>
   <news:publication_date>2026-05-03T12:48:50Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686092</loc>
  <lastmod>2026-05-03T12:47:53Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>GANAX: MIMD-SIMD統合でGANを高速化するハードウェア設計（GANAX: A Unified MIMD-SIMD Acceleration for Generative Adversarial Networks）</news:title>
   <news:publication_date>2026-05-03T12:47:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686090</loc>
  <lastmod>2026-05-03T12:47:43Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>視覚なしでつかむ技術の実用性と示唆（Learning to Grasp without Seeing）</news:title>
   <news:publication_date>2026-05-03T12:47:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686088</loc>
  <lastmod>2026-05-03T12:47:28Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>人間と機械の協働最適化——Apprenticeship SchedulingによるCOVASの提案 (Human-Machine Collaborative Optimization via Apprenticeship Scheduling)</news:title>
   <news:publication_date>2026-05-03T12:47:28Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686086</loc>
  <lastmod>2026-05-03T12:47:18Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>深層RNNはやわらかな階層的構文を内部表現として獲得する（Deep RNNs Encode Soft Hierarchical Syntax）</news:title>
   <news:publication_date>2026-05-03T12:47:18Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686084</loc>
  <lastmod>2026-05-03T11:55:31Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>エッジレスグラフェンにおける分数量子ホールのエネルギーギャップの輸送測定（Quantitative transport measurements of fractional quantum Hall energy gaps in edgeless graphene devices）</news:title>
   <news:publication_date>2026-05-03T11:55:31Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686082</loc>
  <lastmod>2026-05-03T11:55:16Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>短期太陽放射予測のための教師なしクラスタリングとマルチモデル融合（An Unsupervised Clustering-Based Short-Term Solar Forecasting Methodology Using Multi-Model Machine Learning Blending）</news:title>
   <news:publication_date>2026-05-03T11:55:16Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686080</loc>
  <lastmod>2026-05-03T11:54:22Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>弱再帰ユニットによる高速なニューラル機械翻訳（Deep Neural Machine Translation with Weakly-Recurrent Units）</news:title>
   <news:publication_date>2026-05-03T11:54:22Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686078</loc>
  <lastmod>2026-05-03T11:53:36Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>テンソルタイルによるデータ・モデル・ハイブリッド並列性の統一（Unifying Data, Model and Hybrid Parallelism in Deep Learning via Tensor Tiling）</news:title>
   <news:publication_date>2026-05-03T11:53:36Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686076</loc>
  <lastmod>2026-05-03T11:53:19Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>少数サンプルからの疎最適化による構造化力学系抽出（Extracting structured dynamical systems using sparse optimization with very few samples）</news:title>
   <news:publication_date>2026-05-03T11:53:19Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686074</loc>
  <lastmod>2026-05-03T11:52:33Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>乾式EEGによるSSVEP信号の分類に関する研究（On the Classification of SSVEP-Based Dry-EEG Signals via Convolutional Neural Networks）</news:title>
   <news:publication_date>2026-05-03T11:52:33Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686072</loc>
  <lastmod>2026-05-03T11:01:34Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>予算制約下でのDCNNハードウェア最適化に向けた確率的コンピューティングの検討（Towards Budget-Driven Hardware Optimization for Deep Convolutional Neural Networks using Stochastic Computing）</news:title>
   <news:publication_date>2026-05-03T11:01:34Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686070</loc>
  <lastmod>2026-05-03T11:01:25Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Metatrace Actor-Criticによるオンラインステップサイズ調整（Metatrace Actor-Critic: Online Step-size Tuning by Meta-gradient Descent for Reinforcement Learning Control）</news:title>
   <news:publication_date>2026-05-03T11:01:25Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686068</loc>
  <lastmod>2026-05-03T10:59:54Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>時系列をまたぐ意味セグメンテーションの半教師付きドメイン適応（Semi-Supervised Domain Adaptation with Representation Learning for Semantic Segmentation across Time）</news:title>
   <news:publication_date>2026-05-03T10:59:54Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686066</loc>
  <lastmod>2026-05-03T10:59:46Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>計算の無駄を削減する深層学習アクセラレータ（Laconic Deep Learning Computing）</news:title>
   <news:publication_date>2026-05-03T10:59:46Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686064</loc>
  <lastmod>2026-05-03T10:59:37Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>観客の表情行動を捉える教師なし深層表現（Unsupervised Deep Representations for Learning Audience Facial Behaviors）</news:title>
   <news:publication_date>2026-05-03T10:59:37Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686062</loc>
  <lastmod>2026-05-03T10:59:22Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ニューラル・ベストバディによる異種画像対応の発見（Neural Best-Buddies: Sparse Cross-Domain Correspondence）</news:title>
   <news:publication_date>2026-05-03T10:59:22Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686060</loc>
  <lastmod>2026-05-03T10:58:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Guided CNNによるシーンテキスト検出の高速化と高精度化（Boosting up Scene Text Detectors with Guided CNN）</news:title>
   <news:publication_date>2026-05-03T10:58:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686058</loc>
  <lastmod>2026-05-03T10:07:25Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>中性子星合体GW170817のX線アフターグロウの減衰（Fading of the X-ray Afterglow of Neutron Star Merger GW170817/GRB170817A at 260 Days）</news:title>
   <news:publication_date>2026-05-03T10:07:25Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686056</loc>
  <lastmod>2026-05-03T09:57:38Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>深層特徴の再配置による任意スタイル転送（Arbitrary Style Transfer with Deep Feature Reshuffle）</news:title>
   <news:publication_date>2026-05-03T09:57:38Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686054</loc>
  <lastmod>2026-05-03T09:56:40Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Hαと[NII]が欠落する場合の星形成銀河とAGNの識別（The discrimination between star-forming and AGN galaxies in the absence of Hα and [NII]: A machine learning approach）</news:title>
   <news:publication_date>2026-05-03T09:56:40Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686052</loc>
  <lastmod>2026-05-03T09:56:31Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>単一カラー画像からの3D人体姿勢と形状推定の学習（Learning to Estimate 3D Human Pose and Shape from a Single Color Image）</news:title>
   <news:publication_date>2026-05-03T09:56:31Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686050</loc>
  <lastmod>2026-05-03T09:56:16Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Ariadneによる機械学習プログラム解析（Ariadne: Analysis for Machine Learning Programs）</news:title>
   <news:publication_date>2026-05-03T09:56:16Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686048</loc>
  <lastmod>2026-05-03T09:55:46Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>系列学における周辺尤度の役割（Marginal likelihoods in phylogenetics: a review of methods and applications）</news:title>
   <news:publication_date>2026-05-03T09:55:46Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686046</loc>
  <lastmod>2026-05-03T09:04:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>共同学習における意図しない特徴漏洩の悪用（Exploiting Unintended Feature Leakage in Collaborative Learning）</news:title>
   <news:publication_date>2026-05-03T09:04:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686044</loc>
  <lastmod>2026-05-03T09:04:35Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>家庭用品の材質分類における分光法の活用（Classification of Household Materials via Spectroscopy）</news:title>
   <news:publication_date>2026-05-03T09:04:35Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686042</loc>
  <lastmod>2026-05-03T09:04:27Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>自動タクソノミー誘導のエンドツーエンド強化学習（End-to-End Reinforcement Learning for Automatic Taxonomy Induction）</news:title>
   <news:publication_date>2026-05-03T09:04:27Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686040</loc>
  <lastmod>2026-05-03T09:04:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Stein Variational Gradient Descentの平均場限界の解析（SCALING LIMIT OF THE STEIN VARIATIONAL GRADIENT DESCENT: THE MEAN FIELD REGIME）</news:title>
   <news:publication_date>2026-05-03T09:04:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686038</loc>
  <lastmod>2026-05-03T09:03:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Deep Netsが視覚研究にもたらしたもの（Deep Nets: What have they ever done for Vision?）</news:title>
   <news:publication_date>2026-05-03T09:03:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686036</loc>
  <lastmod>2026-05-03T09:03:40Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>動作を「動詞だけ」で明確に表す試み（Towards an Unequivocal Representation of Actions）</news:title>
   <news:publication_date>2026-05-03T09:03:40Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686034</loc>
  <lastmod>2026-05-03T09:03:27Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>出力分布の正則化による要約生成の語義一貫性向上（Regularizing Output Distribution of Abstractive Chinese Social Media Text Summarization for Improved Semantic Consistency）</news:title>
   <news:publication_date>2026-05-03T09:03:27Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686032</loc>
  <lastmod>2026-05-03T08:12:07Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Dense and Diverse Capsule Networks を用いたカプセルの学習強化（Dense and Diverse Capsule Networks: Making the Capsules Learn Better）</news:title>
   <news:publication_date>2026-05-03T08:12:07Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686030</loc>
  <lastmod>2026-05-03T08:11:53Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>植物フェノタイピングのための3D点群多視点セマンティックラベリング（Multi-View Semantic Labeling of 3D Point Clouds for Automated Plant Phenotyping）</news:title>
   <news:publication_date>2026-05-03T08:11:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686028</loc>
  <lastmod>2026-05-03T08:10:55Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>抽象的要約のためのグローバルエンコーディング（Global Encoding for Abstractive Summarization）</news:title>
   <news:publication_date>2026-05-03T08:10:55Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686026</loc>
  <lastmod>2026-05-03T08:10:47Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>1000個の偶然観測された小惑星の分類と光度曲線データ（TAXONOMY AND LIGHT-CURVE DATA OF 1000 SERENDIPITOUSLY OBSERVED MAIN-BELT ASTEROIDS）</news:title>
   <news:publication_date>2026-05-03T08:10:47Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686024</loc>
  <lastmod>2026-05-03T08:10:35Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>WISER: 学術領域におけるエキスパート探索の意味論的アプローチ（WISER: A Semantic Approach for Expert Finding in Academia based on Entity Linking）</news:title>
   <news:publication_date>2026-05-03T08:10:35Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686022</loc>
  <lastmod>2026-05-03T08:10:26Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>整流ワイヤネットワークと単調学習の実践的理解（Monotone Learning with Rectified Wire Networks）</news:title>
   <news:publication_date>2026-05-03T08:10:26Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686020</loc>
  <lastmod>2026-05-03T07:18:39Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>時系列データの普遍的エンコーダの提案（Towards a Universal Neural Network Encoder for Time Series）</news:title>
   <news:publication_date>2026-05-03T07:18:39Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686018</loc>
  <lastmod>2026-05-03T07:18:24Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>EM-Softmaxが変える画像分類の精度向上（Ensemble Soft-Margin Softmax Loss for Image Classification）</news:title>
   <news:publication_date>2026-05-03T07:18:24Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686016</loc>
  <lastmod>2026-05-03T07:18:09Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>クラウド状データに対するラベリングの定式化（Labelling as an unsupervised learning problem）</news:title>
   <news:publication_date>2026-05-03T07:18:09Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686014</loc>
  <lastmod>2026-05-03T07:17:00Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>非形式的数学記述を形式化するニューラル翻訳の第一歩（First Experiments with Neural Translation of Informal to Formal Mathematics）</news:title>
   <news:publication_date>2026-05-03T07:17:00Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686012</loc>
  <lastmod>2026-05-03T07:16:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>大規模データにおける連想分類器の分散化（Scaling associative classification for very large datasets）</news:title>
   <news:publication_date>2026-05-03T07:16:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686010</loc>
  <lastmod>2026-05-03T07:16:16Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>損失を考慮した近似推論によるベイズニューラルネットの実務的意義（Loss-Calibrated Approximate Inference in Bayesian Neural Networks）</news:title>
   <news:publication_date>2026-05-03T07:16:16Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 <url>
  <loc>https://aibr.jp/archives/686008</loc>
  <lastmod>2026-05-03T07:16:08Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>会話を続けるチャットボットのための「Second Response Generation」研究（Improv Chat: Second Response Generation for Chatbot）</news:title>
   <news:publication_date>2026-05-03T07:16:08Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686006</loc>
  <lastmod>2026-05-03T06:25:15Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Freebase再構成から読み解く知識グラフの設計思想（OK Google, What Is Your Ontology?）</news:title>
   <news:publication_date>2026-05-03T06:25:15Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686004</loc>
  <lastmod>2026-05-03T06:25:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>バンドット手法による頑健な探索戦略の学習（Learning Robust Search Strategies Using a Bandit-Based Approach）</news:title>
   <news:publication_date>2026-05-03T06:25:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
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 <url>
  <loc>https://aibr.jp/archives/686002</loc>
  <lastmod>2026-05-03T06:24:43Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>希薄化が非対称再帰型ニューラルネットワークに与える影響（Effect of dilution in asymmetric recurrent neural networks）</news:title>
   <news:publication_date>2026-05-03T06:24:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/686000</loc>
  <lastmod>2026-05-03T06:24:27Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ソフトウェア開発における人的資本の可視化と指標化（Human Capital in Software Engineering: A Systematic Mapping of Reconceptualized Human Aspect Studies）</news:title>
   <news:publication_date>2026-05-03T06:24:27Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685998</loc>
  <lastmod>2026-05-03T06:24:18Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Hybrid Adaptive Fuzzy Extreme Learning Machineの概説（Hybrid Adaptive Fuzzy Extreme Learning Machine for text classification）</news:title>
   <news:publication_date>2026-05-03T06:24:18Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685996</loc>
  <lastmod>2026-05-03T06:24:09Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>顔表情認識のための深層共分散記述子（Deep Covariance Descriptors for Facial Expression Recognition）</news:title>
   <news:publication_date>2026-05-03T06:24:09Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685994</loc>
  <lastmod>2026-05-03T06:23:54Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>アンサンブル極限学習機によるテキスト分類（Text classification based on ensemble extreme learning machine）</news:title>
   <news:publication_date>2026-05-03T06:23:54Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685992</loc>
  <lastmod>2026-05-03T05:32:45Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ドメイン感受性と感情を考慮した単語埋め込み（Learning Domain-Sensitive and Sentiment-Aware Word Embeddings）</news:title>
   <news:publication_date>2026-05-03T05:32:45Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685990</loc>
  <lastmod>2026-05-03T05:32:36Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ロジスティック損失関数の普遍性（On the Universality of the Logistic Loss Function）</news:title>
   <news:publication_date>2026-05-03T05:32:36Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685988</loc>
  <lastmod>2026-05-03T05:32:22Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>推論志向の読解評価：ParallelQA（Towards Inference-Oriented Reading Comprehension: ParallelQA）</news:title>
   <news:publication_date>2026-05-03T05:32:22Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685986</loc>
  <lastmod>2026-05-03T05:31:50Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ファイバ非線形性を含む幾何学的コンステレーションシェーピングの深層学習 (Deep Learning of Geometric Constellation Shaping including Fiber Nonlinearities)</news:title>
   <news:publication_date>2026-05-03T05:31:50Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685984</loc>
  <lastmod>2026-05-03T05:31:36Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>軸索遅延が多層ネットワークの構造発達に与える影響（Impact of axonal delay on structure development in a multi-layered network）</news:title>
   <news:publication_date>2026-05-03T05:31:36Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685982</loc>
  <lastmod>2026-05-03T04:40:49Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>共変量優先度付けによるマッチングと機械学習による統計調整の比較（Comparing Covariate Prioritization via Matching to Machine Learning Methods for Causal Inference using Five Empirical Applications）</news:title>
   <news:publication_date>2026-05-03T04:40:49Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685980</loc>
  <lastmod>2026-05-03T04:32:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>空間暖房の最適制御に向けた深層強化学習の応用（Deep Reinforcement Learning for Optimal Control of Space Heating）</news:title>
   <news:publication_date>2026-05-03T04:32:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685978</loc>
  <lastmod>2026-05-03T04:32:32Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>k-space深層学習による高速MRI補間（k-Space Deep Learning for Accelerated MRI）</news:title>
   <news:publication_date>2026-05-03T04:32:32Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685976</loc>
  <lastmod>2026-05-03T04:32:17Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Cr2O3における原子間隙拡散の第一原理解析（A First Principles Investigation of Native Interstitial Diffusion in Cr2O3）</news:title>
   <news:publication_date>2026-05-03T04:32:17Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685974</loc>
  <lastmod>2026-05-03T04:31:07Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ラジアルな方位選択性の出現：層状ネットワークにおける細胞密度変化と偏心の影響（Emergence of radial orientation selectivity: Effect of cell density changes and eccentricity in a layered network）</news:title>
   <news:publication_date>2026-05-03T04:31:07Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685972</loc>
  <lastmod>2026-05-03T04:30:58Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>転写因子とDNA結合の機械学習アンサンブル（Transcription Factor-DNA Binding Via Machine Learning Ensembles）</news:title>
   <news:publication_date>2026-05-03T04:30:58Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685970</loc>
  <lastmod>2026-05-03T04:30:38Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>談話を意識したニューラル報酬による一貫性の高い文章生成（Discourse-Aware Neural Rewards for Coherent Text Generation）</news:title>
   <news:publication_date>2026-05-03T04:30:38Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685968</loc>
  <lastmod>2026-05-03T03:39:18Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>コンピュータネットワークトラフィックにおける異常検知のためのシーケンス集約規則（Sequence Aggregation Rules for Anomaly Detection in Computer Network Traffic）</news:title>
   <news:publication_date>2026-05-03T03:39:18Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685966</loc>
  <lastmod>2026-05-03T03:39:08Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>キャッシュを計算資源に変える発想―メモリ内でDNN推論を高速化するNeural Cache（Neural Cache: Bit-Serial In-Cache Acceleration of Deep Neural Networks）</news:title>
   <news:publication_date>2026-05-03T03:39:08Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685964</loc>
  <lastmod>2026-05-03T03:38:54Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ResNeXtの構造と実践的評価（Evaluating ResNeXt Model Architecture for Image Classification）</news:title>
   <news:publication_date>2026-05-03T03:38:54Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685962</loc>
  <lastmod>2026-05-03T03:38:19Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>細胞組織画像の高速かつ高精度な腫瘍セグメンテーション（Fast and Accurate Tumor Segmentation of Histology Images using Persistent Homology and Deep Convolutional Features）</news:title>
   <news:publication_date>2026-05-03T03:38:19Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685960</loc>
  <lastmod>2026-05-03T03:38:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>サブワード情報を組み込んだ行列分解型単語埋め込み（Incorporating Subword Information into Matrix Factorization Word Embeddings）</news:title>
   <news:publication_date>2026-05-03T03:38:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685958</loc>
  <lastmod>2026-05-03T03:37:57Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>LSTMは重みつき和を動的に計算する装置である（Long Short-Term Memory as a Dynamically Computed Element-wise Weighted Sum）</news:title>
   <news:publication_date>2026-05-03T03:37:57Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685956</loc>
  <lastmod>2026-05-03T02:46:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>オリオン星雲クラスターにおける原始惑星系円盤の性質（PROTOPLANETARY DISK PROPERTIES IN THE ORION NEBULA CLUSTER: INITIAL RESULTS FROM DEEP, HIGH-RESOLUTION ALMA OBSERVATIONS）</news:title>
   <news:publication_date>2026-05-03T02:46:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685954</loc>
  <lastmod>2026-05-03T02:46:43Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>FIGSによる大質量銀河の星形成履歴解析（FIGS: Spectral fitting constraints on the star formation history of massive galaxies since Cosmic Noon）</news:title>
   <news:publication_date>2026-05-03T02:46:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685952</loc>
  <lastmod>2026-05-03T02:46:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ベケンシュタインによるブラックホール面積の量子化（Bekenstein Quantization of Black-Hole Surface Area）</news:title>
   <news:publication_date>2026-05-03T02:46:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685950</loc>
  <lastmod>2026-05-03T02:44:45Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>教師なしバイリンガル辞書誘導の限界（On the Limitations of Unsupervised Bilingual Dictionary Induction）</news:title>
   <news:publication_date>2026-05-03T02:44:45Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685948</loc>
  <lastmod>2026-05-03T02:44:20Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>水道管破裂リスクの機械学習評価と予防（Using Machine Learning to Assess the Risk of and Prevent Water Main Breaks）</news:title>
   <news:publication_date>2026-05-03T02:44:20Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685946</loc>
  <lastmod>2026-05-03T01:53:15Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ランダム神経ネットワークにおける結合から集合的動力学へ（From synaptic interactions to collective dynamics in random neuronal networks models: Critical role of eigenvectors and transient behavior）</news:title>
   <news:publication_date>2026-05-03T01:53:15Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685944</loc>
  <lastmod>2026-05-03T01:51:01Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>遅延宇宙膨張のモデル非依存的評価の改良（An improved model-independent assessment of the late-time cosmic expansion）</news:title>
   <news:publication_date>2026-05-03T01:51:01Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685942</loc>
  <lastmod>2026-05-03T01:50:46Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>測定数が変動する状況下におけるフーリエ・プチグラフィーの位相復元（Phase retrieval for Fourier Ptychography under varying amount of measurements）</news:title>
   <news:publication_date>2026-05-03T01:50:46Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685940</loc>
  <lastmod>2026-05-03T01:50:00Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ヒューマノイドにおける協調作業の強化学習（Learning Coordinated Tasks using Reinforcement Learning in Humanoids）</news:title>
   <news:publication_date>2026-05-03T01:50:00Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685938</loc>
  <lastmod>2026-05-03T01:49:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>IoTにおける協調オンライン学習によるモバイルエッジコンピューティングの安全性（Secure Mobile Edge Computing in IoT via Collaborative Online Learning）</news:title>
   <news:publication_date>2026-05-03T01:49:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 <url>
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  <lastmod>2026-05-03T01:49:15Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-03T01:49:15Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>二次優位情報を用いた方策最適化（Policy Optimization with Second-Order Advantage Information）</news:title>
   <news:publication_date>2026-05-03T01:49:00Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685932</loc>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>敵対的マルウェアに対する堅牢性の視覚的特徴（On Visual Hallmarks of Robustness to Adversarial Malware）</news:title>
   <news:publication_date>2026-05-03T00:58:03Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>深層信念ネットワークによる話者認識の示唆（Speaker Recognition using Deep Belief Networks）</news:title>
   <news:publication_date>2026-05-03T00:57:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ハイパーカミオカンデ検出器の設計と意義（Design of the Hyper-Kamiokande Detector）</news:title>
   <news:publication_date>2026-05-03T00:57:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685926</loc>
  <lastmod>2026-05-03T00:56:47Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>拡散に基づくネットワーク埋め込み（Diffusion Based Network Embedding）</news:title>
   <news:publication_date>2026-05-03T00:56:47Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685924</loc>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-03T00:56:38Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685922</loc>
  <lastmod>2026-05-03T00:56:24Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>カプセルによる深層ニューラルネットワークの統一枠組み（A Unified Framework of Deep Neural Networks by Capsules）</news:title>
   <news:publication_date>2026-05-03T00:56:24Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685920</loc>
  <lastmod>2026-05-03T00:56:09Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Sparse SfM深度事前知識を用いたDeep 2.5D車両分類（Deep 2.5D Vehicle Classification with Sparse SfM Depth Prior for Automated Toll Systems）</news:title>
   <news:publication_date>2026-05-03T00:56:09Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685918</loc>
  <lastmod>2026-05-03T00:04:45Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>量子状態識別のための最適普遍学習機（Optimal universal learning machines for quantum state discrimination）</news:title>
   <news:publication_date>2026-05-03T00:04:45Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685916</loc>
  <lastmod>2026-05-03T00:04:33Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>深層学習で光学情報記録の限界を押し広げる（Pushing the limits of optical information storage using deep learning）</news:title>
   <news:publication_date>2026-05-03T00:04:33Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685914</loc>
  <lastmod>2026-05-03T00:04:25Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>カテゴリ変数と整数変数を含むベイズ最適化の扱い（Dealing with Categorical and Integer-valued Variables in Bayesian Optimization with Gaussian Processes）</news:title>
   <news:publication_date>2026-05-03T00:04:25Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685912</loc>
  <lastmod>2026-05-03T00:03:47Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>コンパイラ最適化における機械学習の適用（Machine Learning in Compiler Optimisation）</news:title>
   <news:publication_date>2026-05-03T00:03:47Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685910</loc>
  <lastmod>2026-05-03T00:03:39Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>畳み込みニューラルネットワーク層の入力特徴マップでプライバシー損失を制御する手法（Controlling the privacy loss with the input feature maps of the layers in convolutional neural networks）</news:title>
   <news:publication_date>2026-05-03T00:03:39Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685908</loc>
  <lastmod>2026-05-03T00:03:26Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>中間質量巨星と超巨星の深層に迫る知見（Deep secrets of intermediate-mass giants and supergiants）</news:title>
   <news:publication_date>2026-05-03T00:03:26Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685906</loc>
  <lastmod>2026-05-02T23:12:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>畳み込みプロトタイプ学習による頑健な分類（Robust Classification with Convolutional Prototype Learning）</news:title>
   <news:publication_date>2026-05-02T23:12:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685904</loc>
  <lastmod>2026-05-02T23:11:47Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>デコーディング・デコーダー：教師なし類似性タスクのための最適表現空間の探索（DECODING DECODERS: FINDING OPTIMAL REPRESENTATION SPACES FOR UNSUPERVISED SIMILARITY TASKS）</news:title>
   <news:publication_date>2026-05-02T23:11:47Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685902</loc>
  <lastmod>2026-05-02T23:11:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T23:11:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685900</loc>
  <lastmod>2026-05-02T23:10:46Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>IoTボットネット攻撃のネットワーク検知に関する自動検出手法の要点（N-BaIoT: Network-based Detection of IoT Botnet Attacks Using Deep Autoencoders）</news:title>
   <news:publication_date>2026-05-02T23:10:46Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685898</loc>
  <lastmod>2026-05-02T23:10:26Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>太陽フレア予測の深層学習モデル（DEEP FLARE NET (DeFN) MODEL FOR SOLAR FLARE PREDICTION）</news:title>
   <news:publication_date>2026-05-02T23:10:26Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685896</loc>
  <lastmod>2026-05-02T23:10:01Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ナノ溝における連続的凝縮（Continuous condensation in nanogrooves）</news:title>
   <news:publication_date>2026-05-02T23:10:01Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685894</loc>
  <lastmod>2026-05-02T23:09:31Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ニューラルランキングモデルのドメイン横断正則化（Cross Domain Regularization for Neural Ranking Models using Adversarial Learning）</news:title>
   <news:publication_date>2026-05-02T23:09:31Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685892</loc>
  <lastmod>2026-05-02T22:18:17Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>衛星画像の高解像度化をGANで実現する試み（PSGAN: A Generative Adversarial Network for Remote Sensing Image Pan-sharpening）</news:title>
   <news:publication_date>2026-05-02T22:18:17Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685890</loc>
  <lastmod>2026-05-02T22:09:06Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>判別器の表現を多様化してGANの学習を安定化する手法（IMPROVING GAN TRAINING VIA BINARIZED REPRESENTATION ENTROPY (BRE) REGULARIZATION）</news:title>
   <news:publication_date>2026-05-02T22:09:06Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685888</loc>
  <lastmod>2026-05-02T22:08:58Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>オートエンコーダとニューラル決定森林による意見不正検出（Opinion Fraud Detection via Neural Autoencoder Decision Forest）</news:title>
   <news:publication_date>2026-05-02T22:08:58Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685886</loc>
  <lastmod>2026-05-02T22:07:51Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>HMIの疑似連続光解釈（Understanding the HMI pseudocontinuum in white-light solar flares）</news:title>
   <news:publication_date>2026-05-02T22:07:51Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685884</loc>
  <lastmod>2026-05-02T22:07:38Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>敵対的コントラスト推定（Adversarial Contrastive Estimation）</news:title>
   <news:publication_date>2026-05-02T22:07:38Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685882</loc>
  <lastmod>2026-05-02T22:07:26Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>DeepWalkingによるスマートフォン歩行速度推定（DeepWalking: Enabling Smartphone-based Walking Speed Estimation Using Deep Learning）</news:title>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685880</loc>
  <lastmod>2026-05-02T22:06:51Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>教えることを学ぶ――Learning to Teach（Learning to Teach）</news:title>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685878</loc>
  <lastmod>2026-05-02T21:15:44Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>低資源言語の語彙埋め込みを学習するPU学習の提案（Learning Word Embeddings for Low-resource Languages by PU Learning）</news:title>
   <news:publication_date>2026-05-02T21:15:44Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685876</loc>
  <lastmod>2026-05-02T21:15:25Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>機械学習によるアトラクタ再構築（Attractor Reconstruction by Machine Learning）</news:title>
   <news:publication_date>2026-05-02T21:15:25Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685874</loc>
  <lastmod>2026-05-02T21:15:12Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ベイジアンネットワーク分類器の説明に関する記号的アプローチ（A Symbolic Approach to Explaining Bayesian Network Classifiers）</news:title>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685872</loc>
  <lastmod>2026-05-02T21:13:25Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>注意認識合成ネットワークによる人物再識別（Attention-Aware Compositional Network for Person Re-identification）</news:title>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685870</loc>
  <lastmod>2026-05-02T21:13:12Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>SPG-Net: セグメンテーション予測と誘導による画像インペインティング（SPG-Net: Segmentation Prediction and Guidance Network for Image Inpainting）</news:title>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>報酬推定による深層強化学習の分散削減（Reward Estimation for Variance Reduction in Deep Reinforcement Learning）</news:title>
   <news:publication_date>2026-05-02T21:12:40Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685864</loc>
  <lastmod>2026-05-02T20:20:16Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>人間とロボットの協働を守る「監督者の安全集合」を学ぶ（Modeling Supervisor Safe Sets for Improving Collaboration in Human-Robot Teams）</news:title>
   <news:publication_date>2026-05-02T20:20:16Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685862</loc>
  <lastmod>2026-05-02T20:19:36Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>多尺度計量による自己組織化マップの構造解析（Multi-scale metrics and self-organizing maps: a computational approach to the structure of sensory maps）</news:title>
   <news:publication_date>2026-05-02T20:19:36Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685860</loc>
  <lastmod>2026-05-02T20:19:22Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Network Enhancementによる生物ネットワークのノイズ除去（Network Enhancement: a general method to denoise weighted biological networks）</news:title>
   <news:publication_date>2026-05-02T20:19:22Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685858</loc>
  <lastmod>2026-05-02T20:18:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ガウス過程予測のVecchia近似 (Vecchia approximations of Gaussian-process predictions)</news:title>
   <news:publication_date>2026-05-02T20:18:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685856</loc>
  <lastmod>2026-05-02T20:17:47Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>子ども向け音声認識への成人モデルの転移学習（Transfer Learning from Adult to Children for Speech Recognition: Evaluation, Analysis and Recommendations）</news:title>
   <news:publication_date>2026-05-02T20:17:47Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685854</loc>
  <lastmod>2026-05-02T20:17:33Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>インスタンス正規化が示した単一画像デヘイズの有効性（The Effectiveness of Instance Normalization: a Strong Baseline for Single Image Dehazing）</news:title>
   <news:publication_date>2026-05-02T20:17:33Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685852</loc>
  <lastmod>2026-05-02T19:25:42Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>周波数帯域フィルタを用いた高い拡張性を持つ画像再構成（Highly Scalable Image Reconstruction using Deep Neural Networks with Bandpass Filtering）</news:title>
   <news:publication_date>2026-05-02T19:25:42Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685850</loc>
  <lastmod>2026-05-02T19:25:29Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>エンドツーエンド注意機構による音声認識の改善（Improved training of end-to-end attention models for speech recognition）</news:title>
   <news:publication_date>2026-05-02T19:25:29Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685848</loc>
  <lastmod>2026-05-02T19:25:14Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>最適なチーム編成のための深層ニューラルネットワーク（Deep Neural Networks for Optimal Team Composition）</news:title>
   <news:publication_date>2026-05-02T19:25:14Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685846</loc>
  <lastmod>2026-05-02T19:24:18Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>語彙資源に未収録の語へ意味情報を広げる後処理（Post-Specialisation: Retrofitting Vectors of Words Unseen in Lexical Resources）</news:title>
   <news:publication_date>2026-05-02T19:24:18Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685844</loc>
  <lastmod>2026-05-02T19:24:10Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>エッジ属性を取り込むネットワーク埋め込みの進化（Capturing Edge Attributes via Network Embedding）</news:title>
   <news:publication_date>2026-05-02T19:24:10Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685842</loc>
  <lastmod>2026-05-02T19:24:03Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>網膜OCT画像における高反射小斑点の完全自動セグメンテーション（Fully Automated Segmentation of Hyperreflective Foci in Optical Coherence Tomography Images）</news:title>
   <news:publication_date>2026-05-02T19:24:03Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685840</loc>
  <lastmod>2026-05-02T19:23:50Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ジャンプを伴うランダムウォークの緩和時間の解析（Analysis of Relaxation Time in Random Walk with Jumps）</news:title>
   <news:publication_date>2026-05-02T19:23:50Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685838</loc>
  <lastmod>2026-05-02T18:32:33Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ペア付きと非ペア付きトレーニングを同時に用いた画像変換学習（Learning image-to-image translation using paired and unpaired training samples）</news:title>
   <news:publication_date>2026-05-02T18:32:33Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685836</loc>
  <lastmod>2026-05-02T18:32:19Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>礼節を保つ対話生成――並列データなしで礼儀正しい応答を作る方法（Polite Dialogue Generation Without Parallel Data）</news:title>
   <news:publication_date>2026-05-02T18:32:19Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685834</loc>
  <lastmod>2026-05-02T18:32:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>高解像度医用画像合成における漸進的生成対向ネットワークの応用（High-resolution medical image synthesis using progressively grown generative adversarial networks）</news:title>
   <news:publication_date>2026-05-02T18:32:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685832</loc>
  <lastmod>2026-05-02T18:31:24Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ガウス確率場の局所的代数的簡約化（Local, algebraic simplifications of Gaussian random fields）</news:title>
   <news:publication_date>2026-05-02T18:31:24Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685830</loc>
  <lastmod>2026-05-02T18:31:09Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>大規模空間データにおける確率密度関数の並列計算（Parallel Computation of PDFs on Big Spatial Data Using Spark）</news:title>
   <news:publication_date>2026-05-02T18:31:09Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685828</loc>
  <lastmod>2026-05-02T18:31:01Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>深紫外から中赤外までのスーパーコンティニューム生成（Deep-UV to mid-IR supercontinuum generation driven by mid-IR ultrashort pulses in a gas-filled fiber）</news:title>
   <news:publication_date>2026-05-02T18:31:01Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685826</loc>
  <lastmod>2026-05-02T18:30:47Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>混合イニシアティブとマルチモーダルフィードバックによる画像検索（Image Retrieval with Mixed Initiative and Multimodal Feedback）</news:title>
   <news:publication_date>2026-05-02T18:30:47Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685824</loc>
  <lastmod>2026-05-02T17:39:44Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Connection Tableauxにおける機械学習ガイダンスと証明認証（Machine Learning Guidance and Proof Certification for Connection Tableaux）</news:title>
   <news:publication_date>2026-05-02T17:39:44Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685822</loc>
  <lastmod>2026-05-02T17:39:35Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>境界で学習するCNN（Learning on the Edge: Explicit Boundary Handling in CNNs）</news:title>
   <news:publication_date>2026-05-02T17:39:35Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685820</loc>
  <lastmod>2026-05-02T17:39:21Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>身体を自己学習するロボット：予測符号化による自己推定の実装（Adaptive robot body learning and estimation through predictive coding）</news:title>
   <news:publication_date>2026-05-02T17:39:21Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685818</loc>
  <lastmod>2026-05-02T17:38:45Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>プーリングやストライドを含むCNNでの高速な密な特徴抽出（Fast Dense Feature Extraction with CNNs that have Pooling or Striding Layers）</news:title>
   <news:publication_date>2026-05-02T17:38:45Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685816</loc>
  <lastmod>2026-05-02T17:38:37Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>行動データにおける興味深いパターンの発見にSimpsonのパラドックスを用いる（Using Simpson’s Paradox to Discover Interesting Patterns in Behavioral Data）</news:title>
   <news:publication_date>2026-05-02T17:38:37Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685814</loc>
  <lastmod>2026-05-02T17:38:23Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>M49のハローにおける三つの動的に異なる恒星集団（Three dynamically distinct stellar populations in the halo of M49）</news:title>
   <news:publication_date>2026-05-02T17:38:23Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685812</loc>
  <lastmod>2026-05-02T17:38:14Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>最適制御における欺瞞（Deception in Optimal Control）</news:title>
   <news:publication_date>2026-05-02T17:38:14Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685810</loc>
  <lastmod>2026-05-02T16:47:16Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>能動的視点計画による物体再構成（Active Object Reconstruction Using a Guided View Planner）</news:title>
   <news:publication_date>2026-05-02T16:47:16Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685808</loc>
  <lastmod>2026-05-02T16:47:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>データ量子化を意識した深層ネットワークによる高精度・高速スパイキングニューロモーフィックシステム（Towards Accurate and High-Speed Spiking Neuromorphic Systems with Data Quantization-Aware Deep Networks）</news:title>
   <news:publication_date>2026-05-02T16:47:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685806</loc>
  <lastmod>2026-05-02T16:46:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Recurrent CNNによる3D視線推定（Recurrent CNN for 3D Gaze Estimation using Appearance and Shape Cues）</news:title>
   <news:publication_date>2026-05-02T16:46:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685804</loc>
  <lastmod>2026-05-02T16:45:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>光の軌道角運動量を誘起する非吸収光学素子の研究（Orbital Angular Momentum Induced by Nonabsorbing Optical Elements through Space-variant Polarization-state Manipulations）</news:title>
   <news:publication_date>2026-05-02T16:45:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685802</loc>
  <lastmod>2026-05-02T16:45:41Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>二値化された測定からのスパース復元を扱うBSBL（Binary Sparse Bayesian Learning Algorithm for One-bit Compressed Sensing）</news:title>
   <news:publication_date>2026-05-02T16:45:41Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685800</loc>
  <lastmod>2026-05-02T16:45:11Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>MWC 758の円盤における塵の渦捕獲の可視化（Cm-wavelength observations of MWC 758: resolved dust trapping in a vortex）</news:title>
   <news:publication_date>2026-05-02T16:45:11Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685798</loc>
  <lastmod>2026-05-02T16:44:57Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Gaia DR2における新たな散開星団発見手法（A new method for unveiling Open Clusters in Gaia）</news:title>
   <news:publication_date>2026-05-02T16:44:57Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685796</loc>
  <lastmod>2026-05-02T15:53:53Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>E-Commerceレビューの統計解析と双方向RNNによる感情分類（Statistical Analysis on E-Commerce Reviews, with Sentiment Classification using Bidirectional Recurrent Neural Network）</news:title>
   <news:publication_date>2026-05-02T15:53:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685794</loc>
  <lastmod>2026-05-02T15:45:53Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>大規模ペプチド同定のための効率的オンライン学習（Eﬃcient online learning for large-scale peptide identification）</news:title>
   <news:publication_date>2026-05-02T15:45:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685792</loc>
  <lastmod>2026-05-02T15:45:17Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>カテゴリーに基づく深層CCAによる細粒度会場探索（Category-Based Deep CCA for Fine-Grained Venue Discovery from Multimodal Data）</news:title>
   <news:publication_date>2026-05-02T15:45:17Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685790</loc>
  <lastmod>2026-05-02T15:44:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>モアレ模様除去のためのマルチレゾリューション畳み込みニューラルネットワーク（Moiré Photo Restoration Using Multiresolution Convolutional Neural Networks）</news:title>
   <news:publication_date>2026-05-02T15:44:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685788</loc>
  <lastmod>2026-05-02T15:44:18Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>非同期アルゴリズムを記述する微分方程式（Differential Equations for Modeling Asynchronous Algorithms）</news:title>
   <news:publication_date>2026-05-02T15:44:18Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685786</loc>
  <lastmod>2026-05-02T15:44:09Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>線形効用を持つ多項ロジット・バンディット（Multinomial Logit Bandit with Linear Utility Functions）</news:title>
   <news:publication_date>2026-05-02T15:44:09Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685784</loc>
  <lastmod>2026-05-02T15:43:55Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>セッションベース推薦におけるユーザー静的コンテキストの活用（Augmenting Recurrent Neural Networks with High-Order User-Contextual Preference for Session-Based Recommendation）</news:title>
   <news:publication_date>2026-05-02T15:43:55Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685782</loc>
  <lastmod>2026-05-02T14:52:42Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>メムリスタネットワークを用いた階層時系列記憶（Hierarchical Temporal Memory using Memristor Networks: A Survey）</news:title>
   <news:publication_date>2026-05-02T14:52:42Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685780</loc>
  <lastmod>2026-05-02T14:52:28Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>音声の基本周波数（F0）推定を回帰で強化する手法（A Regression Model of Recurrent Deep Neural Networks for Noise Robust Estimation of the Fundamental Frequency Contour of Speech）</news:title>
   <news:publication_date>2026-05-02T14:52:28Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685778</loc>
  <lastmod>2026-05-02T14:52:20Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>少量データで音声指示を理解するカプセルネットワークの可能性（Capsule Networks for Low Resource Spoken Language Understanding）</news:title>
   <news:publication_date>2026-05-02T14:52:20Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685776</loc>
  <lastmod>2026-05-02T14:51:24Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>利益を上げるバンディット（Profitable Bandits）</news:title>
   <news:publication_date>2026-05-02T14:51:24Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685774</loc>
  <lastmod>2026-05-02T14:51:15Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>学習によるショートカット接続で物体カウントを改善する（Learning Short-Cut Connections for Object Counting）</news:title>
   <news:publication_date>2026-05-02T14:51:15Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685772</loc>
  <lastmod>2026-05-02T14:51:06Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>入力埋め込み空間における解釈可能な敵対的摂動（Interpretable Adversarial Perturbation in Input Embedding Space for Text）</news:title>
   <news:publication_date>2026-05-02T14:51:06Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685770</loc>
  <lastmod>2026-05-02T14:50:53Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>全言語で使える評価軸：敵対的マルチタスク学習による多言語対話評価（One “Ruler” for All Languages: Multi-Lingual Dialogue Evaluation with Adversarial Multi-Task Learning）</news:title>
   <news:publication_date>2026-05-02T14:50:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685768</loc>
  <lastmod>2026-05-02T13:59:29Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>連続データにおける頻出エンティティの発見（Finding Frequent Entities in Continuous Data）</news:title>
   <news:publication_date>2026-05-02T13:59:29Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685766</loc>
  <lastmod>2026-05-02T13:49:45Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>画像の序数分類と理解—マスキングラベル付きグリッドドロップアウト（Image Ordinal Classification and Understanding: Grid Dropout with Masking Label）</news:title>
   <news:publication_date>2026-05-02T13:49:45Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685764</loc>
  <lastmod>2026-05-02T13:49:37Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>残り時間予測に関する総覧とクロスベンチマーク比較（Survey and cross-benchmark comparison of remaining time prediction methods in business process monitoring）</news:title>
   <news:publication_date>2026-05-02T13:49:37Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685762</loc>
  <lastmod>2026-05-02T13:48:46Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ラピディティギャップ分布とパートン系譜の関係（Rapidity gap distribution in diffractive deep-inelastic scattering and parton genealogy）</news:title>
   <news:publication_date>2026-05-02T13:48:46Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685760</loc>
  <lastmod>2026-05-02T13:48:32Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Tile2Vecによる空間データの教師なし表現学習（Tile2Vec: Unsupervised representation learning for spatially distributed data）</news:title>
   <news:publication_date>2026-05-02T13:48:32Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685758</loc>
  <lastmod>2026-05-02T13:48:23Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>一般化超幾何分布（GHD）に基づく可識別な有向非巡回グラフモデル（Identifiability of Generalized Hypergeometric Distribution (GHD) Directed Acyclic Graphical Models）</news:title>
   <news:publication_date>2026-05-02T13:48:23Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685756</loc>
  <lastmod>2026-05-02T13:48:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>オンライン正規化器によるSoftmax高速化（Online normalizer calculation for softmax）</news:title>
   <news:publication_date>2026-05-02T13:48:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685754</loc>
  <lastmod>2026-05-02T12:56:36Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>弱教師ありビデオオブジェクトの言語に基づく位置推定（Weakly-Supervised Video Object Grounding from Text）</news:title>
   <news:publication_date>2026-05-02T12:56:36Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685752</loc>
  <lastmod>2026-05-02T12:56:17Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>会計不正検出のための法務データ分析（Fighting Accounting Fraud Through Forensic Data Analytics）</news:title>
   <news:publication_date>2026-05-02T12:56:17Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685750</loc>
  <lastmod>2026-05-02T12:55:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>MRPCの時間再構築におけるニューラルネットワーク手法（A neural network based algorithm for MRPC time reconstruction）</news:title>
   <news:publication_date>2026-05-02T12:55:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685748</loc>
  <lastmod>2026-05-02T12:55:18Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>チューン可能なGMMカーネルで木構造に迫る（Several Tunable GMM Kernels）</news:title>
   <news:publication_date>2026-05-02T12:55:18Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685746</loc>
  <lastmod>2026-05-02T12:55:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>マニフェスト文書の階層的解析で細部と全体を同時に読む（Hierarchical Structured Model for Fine-to-coarse Manifesto Text Analysis）</news:title>
   <news:publication_date>2026-05-02T12:55:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685744</loc>
  <lastmod>2026-05-02T12:54:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>MLC NANDフラッシュメモリにおけるデータ保持エラーの実験的特性評価と回復手法（Experimental Characterization, Optimization, and Recovery of Data Retention Errors in MLC NAND Flash Memory）</news:title>
   <news:publication_date>2026-05-02T12:54:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685742</loc>
  <lastmod>2026-05-02T12:54:43Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Web画像検索のインタラクション行動モデル構築（Constructing an Interaction Behavior Model for Web Image Search）</news:title>
   <news:publication_date>2026-05-02T12:54:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685740</loc>
  <lastmod>2026-05-02T12:03:09Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>顔認証のなりすまし検知にCNNを使うと何が変わるか（A Performance Evaluation of Convolutional Neural Networks for Face Anti Spoofing）</news:title>
   <news:publication_date>2026-05-02T12:03:09Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685738</loc>
  <lastmod>2026-05-02T12:02:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Combo Loss: 入力と出力の不均衡を同時に扱う損失関数（Combo Loss: Handling Input and Output Imbalance in Multi-Organ Segmentation）</news:title>
   <news:publication_date>2026-05-02T12:02:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685736</loc>
  <lastmod>2026-05-02T12:02:27Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ゲーデルの不完全性定理の新しい視点と応用（A new viewpoint of the Gödel’s incompleteness theorem and it’s applications）</news:title>
   <news:publication_date>2026-05-02T12:02:27Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685734</loc>
  <lastmod>2026-05-02T12:01:50Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ファストオンライン精密解法：決定論的MDPのスパース報酬問題（Fast Online Exact Solutions for Deterministic MDPs with Sparse Rewards）</news:title>
   <news:publication_date>2026-05-02T12:01:50Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685732</loc>
  <lastmod>2026-05-02T12:01:37Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>動画の要所だけをリアルタイムで抜き出す技術――FFNetによるオンライン高速再生（FFNet: Video Fast-Forwarding via Reinforcement Learning）</news:title>
   <news:publication_date>2026-05-02T12:01:37Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685730</loc>
  <lastmod>2026-05-02T12:01:29Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>深層敵対的学習による微細構造材料設計（Microstructural Materials Design via Deep Adversarial Learning Methodology）</news:title>
   <news:publication_date>2026-05-02T12:01:29Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685728</loc>
  <lastmod>2026-05-02T12:00:53Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ReGANによる系列生成と勾配推定の比較（ReGAN: RE[LAX&amp;#124;BAR&amp;#124;INFORCE] based Sequence Generation using GANs）</news:title>
   <news:publication_date>2026-05-02T12:00:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685726</loc>
  <lastmod>2026-05-02T11:08:54Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>シミュレーションを活用して二足歩行ロボットのベイズ最適化を効率化する手法（Using Simulation to Improve Sample-Efficiency of Bayesian Optimization for Bipedal Robots）</news:title>
   <news:publication_date>2026-05-02T11:08:54Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685724</loc>
  <lastmod>2026-05-02T11:01:44Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>マイクロ構造再現と構造—物性予測への転移学習アプローチ（A Transfer Learning Approach for Microstructure Reconstruction and Structure-property Predictions）</news:title>
   <news:publication_date>2026-05-02T11:01:44Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685722</loc>
  <lastmod>2026-05-02T11:01:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T11:01:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T11:01:11Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>消費者向けIoT機器における圧縮プレーンテキスト検出（Detecting Compressed Cleartext Traffic from Consumer Internet of Things Devices）</news:title>
   <news:publication_date>2026-05-02T10:59:11Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>拡張畳み込みとオクルージョン推論による光フロー学習 (LEARNING OPTICAL FLOW VIA DILATED NETWORKS AND OCCLUSION REASONING)</news:title>
   <news:publication_date>2026-05-02T10:58:41Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>リアルタイム回帰解析における深層畳み込みニューラルネットワーク（Real-time regression analysis with deep convolutional neural networks）</news:title>
   <news:publication_date>2026-05-02T10:06:44Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685710</loc>
  <lastmod>2026-05-02T10:06:20Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>非二値関数に対するスパン・プログラムの一般化（Span programs for non-binary functions）</news:title>
   <news:publication_date>2026-05-02T10:06:20Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685708</loc>
  <lastmod>2026-05-02T10:06:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>二状態リカレントネットワークによる画像超解像（Image Super-Resolution via Dual-State Recurrent Networks）</news:title>
   <news:publication_date>2026-05-02T10:06:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685706</loc>
  <lastmod>2026-05-02T10:05:17Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ホラルキック構造による分散深層学習の性能解析（Holarchic Structures for Decentralized Deep Learning – A Performance Analysis）</news:title>
   <news:publication_date>2026-05-02T10:05:17Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685704</loc>
  <lastmod>2026-05-02T10:05:09Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>非ペイロードベースの難読化による侵入検知器のロバスト化（Improving Network Intrusion Detection Classifiers by Non-payload-Based Exploit-Independent Obfuscations: An Adversarial Approach）</news:title>
   <news:publication_date>2026-05-02T10:05:09Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685702</loc>
  <lastmod>2026-05-02T10:04:50Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>21-cmトモグラフィーから学ぶ深層学習による宇宙の夜明けと再電離の推定（Deep learning from 21-cm tomography of the Cosmic Dawn and Reionization）</news:title>
   <news:publication_date>2026-05-02T10:04:50Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685700</loc>
  <lastmod>2026-05-02T10:04:26Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>PolSARデータの領域ベース分類における確率的距離を用いた放射基底核関数（Region-Based Classification of PolSAR Data Using Radial Basis Kernel Functions With Stochastic Distances）</news:title>
   <news:publication_date>2026-05-02T10:04:26Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685698</loc>
  <lastmod>2026-05-02T09:12:59Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>中間赤方偏移にある大量パッシブ銀河の分子ガスとスケーリング関係（Molecular Gas Contents and Scaling Relations for Massive Passive Galaxies at Intermediate Redshifts from the LEGA-C Survey）</news:title>
   <news:publication_date>2026-05-02T09:12:59Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685696</loc>
  <lastmod>2026-05-02T09:05:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>一層隠れ層ニューラルネットワークの勾配降下法収束性（Gradient Descent for One-Hidden-Layer Neural Networks: Polynomial Convergence and SQ Lower Bounds）</news:title>
   <news:publication_date>2026-05-02T09:05:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685694</loc>
  <lastmod>2026-05-02T09:04:52Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ラージ・マジェラン雲の超外縁に広がる微光の星々（Exploring the Very Extended Low Surface Brightness Stellar Populations of the Large Magellanic Cloud with SMASH）</news:title>
   <news:publication_date>2026-05-02T09:04:52Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685692</loc>
  <lastmod>2026-05-02T09:02:54Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>重力レンズで見つける遠方超新星 — LSSTによるz∼5–7での検出可能性の評価（Detecting strongly lensed supernovae at z ∼5–7 with LSST）</news:title>
   <news:publication_date>2026-05-02T09:02:54Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685690</loc>
  <lastmod>2026-05-02T09:02:47Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>決定木ブースティングのウェーブレット分解による改良（Wavelet Decomposition of Gradient Boosting）</news:title>
   <news:publication_date>2026-05-02T09:02:47Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685688</loc>
  <lastmod>2026-05-02T09:02:34Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Label RefineryによるImageNet分類の精度向上（Label Refinery: Improving ImageNet Classification through Label Progression）</news:title>
   <news:publication_date>2026-05-02T09:02:34Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685686</loc>
  <lastmod>2026-05-02T09:01:19Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>共鳴する未知物理の異常検出──機械学習によるモデル非依存的なバンプハントの拡張（Anomaly Detection for Resonant New Physics with Machine Learning）</news:title>
   <news:publication_date>2026-05-02T09:01:19Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685684</loc>
  <lastmod>2026-05-02T08:09:18Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T08:09:18Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685682</loc>
  <lastmod>2026-05-02T08:01:18Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>3ループにおけるグルージョンジェット関数の計算（Gluon jet function at three loops in QCD）</news:title>
   <news:publication_date>2026-05-02T08:01:18Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685680</loc>
  <lastmod>2026-05-02T08:00:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>API経由のモデル窃取を検知する実践的アプローチ（PRADA: Protecting Against DNN Model Stealing Attacks）</news:title>
   <news:publication_date>2026-05-02T08:00:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685678</loc>
  <lastmod>2026-05-02T08:00:06Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Shattering係数の計算が示す学習保証の本質（Computing the Shattering Coefficient of Supervised Learning Algorithms）</news:title>
   <news:publication_date>2026-05-02T08:00:06Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685676</loc>
  <lastmod>2026-05-02T07:59:31Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T07:59:31Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685674</loc>
  <lastmod>2026-05-02T07:59:17Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T07:59:17Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685672</loc>
  <lastmod>2026-05-02T07:58:47Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>歌声の連続的ピッチ補正をデータ駆動で実現する手法（A DATA-DRIVEN APPROACH TO SMOOTH PITCH CORRECTION FOR SINGING VOICE IN POP MUSIC）</news:title>
   <news:publication_date>2026-05-02T07:58:47Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685670</loc>
  <lastmod>2026-05-02T07:08:01Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>関係性ネットワークによる骨格ベースの行動認識（Relational Network for Skeleton-Based Action Recognition）</news:title>
   <news:publication_date>2026-05-02T07:08:01Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685668</loc>
  <lastmod>2026-05-02T07:07:47Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>単純なランダムフォレストモデルの鋭い解析（Sharp analysis of a simple model for random forests）</news:title>
   <news:publication_date>2026-05-02T07:07:47Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685666</loc>
  <lastmod>2026-05-02T07:07:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>異種データから遺伝子制御ネットワークを同時に学ぶ手法（Learning Gene Regulatory Networks with High-Dimensional Heterogeneous Data）</news:title>
   <news:publication_date>2026-05-02T07:07:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685664</loc>
  <lastmod>2026-05-02T07:06:03Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685662</loc>
  <lastmod>2026-05-02T07:05:50Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>手書き文書の行分割を確率的に解く枠組み（A probabilistic framework for handwritten text line segmentation）</news:title>
   <news:publication_date>2026-05-02T07:05:50Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685660</loc>
  <lastmod>2026-05-02T07:05:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>DC回路のための3D出力可能な高さモデル（3D-Printable Height Models for DC Circuits）</news:title>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685658</loc>
  <lastmod>2026-05-02T07:04:38Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>信号機検出におけるSingle Shot Detectionの適用（Detecting Traffic Lights by Single Shot Detection）</news:title>
   <news:publication_date>2026-05-02T07:04:38Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685656</loc>
  <lastmod>2026-05-02T06:12:43Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ロジスティック・ネットワーク・ラッソの意義と実用性（The Logistic Network Lasso）</news:title>
   <news:publication_date>2026-05-02T06:12:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685654</loc>
  <lastmod>2026-05-02T06:12:29Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>QARC：動画品質を意識したレート制御（QARC: Video Quality Aware Rate Control for Real-Time Video Streaming via Deep Reinforcement Learning）</news:title>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <lastmod>2026-05-02T06:11:19Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:genres>Blog</news:genres>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:publication_date>2026-05-02T06:10:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:genres>Blog</news:genres>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T06:10:16Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:genres>Blog</news:genres>
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 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
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 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ネットワークコミュニティの優先順位付け (Prioritizing network communities)</news:title>
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   <news:genres>Blog</news:genres>
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 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>非摂動的な横運動量（TMD）効果の実験的検証と因子化違反の示唆（Nonperturbative transverse-momentum-dependent effects in dihadron and direct photon-hadron angular correlations in p+p collisions at √s = 200 GeV）</news:title>
   <news:publication_date>2026-05-02T05:09:35Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 </url>
 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T05:08:33Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T05:08:24Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>検索タスクにおける視線追跡と知識変化の関連（Relating Eye-Tracking Measures With Changes In Knowledge on Search Tasks）</news:title>
   <news:publication_date>2026-05-02T05:08:09Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>大規模ネットワーク埋め込みを現実に変えた手法（Billion-scale Network Embedding with Iterative Random Projection）</news:title>
   <news:publication_date>2026-05-02T05:07:50Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-02T04:16:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 </url>
 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:publication_date>2026-05-02T04:16:45Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 </url>
 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>強化学習を用いたマルチモーダル機械翻訳が示した実務的示唆（Multimodal Machine Translation with Reinforcement Learning）</news:title>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>スパース半空間の効率的アクティブラーニング（Efficient Active Learning of Sparse Halfspaces）</news:title>
   <news:publication_date>2026-05-02T04:15:53Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 </url>
 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:title>物理学学習に対する態度と動機付けの関係（Attitude and Motivation towards Learning Physics）</news:title>
   <news:publication_date>2026-05-02T02:20:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>特徴抽出におけるニューラルネットワークの活用の検証（Examining the Use of Neural Networks for Feature Extraction: A Comparative Analysis using Deep Learning, Support Vector Machines, and K-Nearest Neighbor Classifiers）</news:title>
   <news:publication_date>2026-05-02T02:20:35Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <lastmod>2026-05-02T02:20:13Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
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    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:publication_date>2026-05-02T01:27:10Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685578</loc>
  <lastmod>2026-05-02T01:27:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>画像ベースのファッション商品推薦（Image Based Fashion Product Recommendation with Deep Learning）</news:title>
   <news:publication_date>2026-05-02T01:27:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685576</loc>
  <lastmod>2026-05-02T01:26:43Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>学習時にのみ得られる情報を利用した異常検知の拡張（Incorporating Privileged Information to Unsupervised Anomaly Detection）</news:title>
   <news:publication_date>2026-05-02T01:26:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685574</loc>
  <lastmod>2026-05-02T00:35:42Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>文から単語ラベルを推定するゼロショット系列ラベリング（Zero-shot Sequence Labeling: Transferring Knowledge from Sentences to Tokens）</news:title>
   <news:publication_date>2026-05-02T00:35:42Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685572</loc>
  <lastmod>2026-05-02T00:26:20Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>離散化した因子分解機による高速特徴量ベース推薦（Discrete Factorization Machines for Fast Feature-based Recommendation）</news:title>
   <news:publication_date>2026-05-02T00:26:20Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685570</loc>
  <lastmod>2026-05-02T00:25:28Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>FASKと介入知識による因果グラフ復元（FASK with Interventional Knowledge Recovers Edges from the Sachs Model）</news:title>
   <news:publication_date>2026-05-02T00:25:28Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685568</loc>
  <lastmod>2026-05-02T00:24:54Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>BRCA1/BRCA2の未知変異を機械学習で判定する（Predicting clinical significance of BRCA1 and BRCA2 single nucleotide substitution variants with unknown clinical significance using probabilistic neural network and deep neural network-stacked autoencoder）</news:title>
   <news:publication_date>2026-05-02T00:24:54Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685566</loc>
  <lastmod>2026-05-02T00:24:46Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Joint CS-MRI Reconstruction and Segmentation with a Unified Deep Network（Joint CS-MRI Reconstruction and Segmentation with a Unified Deep Network）</news:title>
   <news:publication_date>2026-05-02T00:24:46Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685564</loc>
  <lastmod>2026-05-02T00:24:38Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>モバイル端末向け統合検索フレームワークの第一歩（Target Apps Selection: Towards a Unified Search Framework for Mobile Devices）</news:title>
   <news:publication_date>2026-05-02T00:24:38Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685562</loc>
  <lastmod>2026-05-02T00:24:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>マルチスケール顔復元のための逐次ゲーティングアンサンブルネットワーク（Multi-Scale Face Restoration with Sequential Gating Ensemble Network）</news:title>
   <news:publication_date>2026-05-02T00:24:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685560</loc>
  <lastmod>2026-05-01T23:32:26Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>プライベート逐次学習（Private Sequential Learning）</news:title>
   <news:publication_date>2026-05-01T23:32:26Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685558</loc>
  <lastmod>2026-05-01T23:32:06Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>オブジェクトコードの自動分類技術（Automatic Classification of Object Code Using Machine Learning）</news:title>
   <news:publication_date>2026-05-01T23:32:06Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685556</loc>
  <lastmod>2026-05-01T23:31:48Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>デンドログラムを散布図に変える単純で速い手法：Branching Embedding（Branching embedding: A heuristic dimensionality reduction algorithm based on hierarchical clustering）</news:title>
   <news:publication_date>2026-05-01T23:31:48Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685554</loc>
  <lastmod>2026-05-01T23:31:02Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>名前の文字列から人種・民族を推定する手法の実用性と限界（Predicting Race and Ethnicity From the Sequence of Characters in a Name）</news:title>
   <news:publication_date>2026-05-01T23:31:02Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685552</loc>
  <lastmod>2026-05-01T23:30:43Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>少数で高精度を実現する強化学習ベースのアンサンブル選択（Developing parsimonious ensembles using ensemble diversity within a reinforcement learning framework）</news:title>
   <news:publication_date>2026-05-01T23:30:43Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685550</loc>
  <lastmod>2026-05-01T22:39:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>テキストから学習する患者表現の獲得（Learning Patient Representations from Text）</news:title>
   <news:publication_date>2026-05-01T22:39:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685548</loc>
  <lastmod>2026-05-01T22:39:16Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>RiFCNによる高解像度リモートセンシング画像のセマンティックセグメンテーション（RiFCN: Recurrent Network in Fully Convolutional Network for Semantic Segmentation of High Resolution Remote Sensing Images）</news:title>
   <news:publication_date>2026-05-01T22:39:16Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685546</loc>
  <lastmod>2026-05-01T22:38:58Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>GPU上のニューラル機械翻訳におけるハイパーパラメータ最適化の探究（Exploring Hyper-Parameter Optimization for Neural Machine Translation on GPU Architectures）</news:title>
   <news:publication_date>2026-05-01T22:38:58Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685544</loc>
  <lastmod>2026-05-01T22:38:23Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Cu酸化物高温超伝導体におけるサイト内磁気モーメントの向き（Orientation of the intra-unit-cell magnetic moment in the high-Tc superconductor HgBa2CuO4+δ）</news:title>
   <news:publication_date>2026-05-01T22:38:23Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685542</loc>
  <lastmod>2026-05-01T22:38:17Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>環状・潜在変数・選択バイアスを同時に扱う制約ベース因果探索（A Constraint-Based Algorithm For Causal Discovery with Cycles, Latent Variables &amp;amp; Selection Bias）</news:title>
   <news:publication_date>2026-05-01T22:38:17Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685540</loc>
  <lastmod>2026-05-01T22:38:03Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>2.5D格闘ゲームを学習する深層強化学習（DEEP REINFORCEMENT LEARNING FOR PLAYING 2.5D FIGHTING GAMES）</news:title>
   <news:publication_date>2026-05-01T22:38:03Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685538</loc>
  <lastmod>2026-05-01T22:37:54Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>セルフィー向け抽象化を学習する手法（Learning Selfie-Friendly Abstraction from Artistic Style Images）</news:title>
   <news:publication_date>2026-05-01T22:37:54Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685536</loc>
  <lastmod>2026-05-01T21:46:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>アーティスト群要因の転移学習による音楽ジャンル分類（Transfer Learning of Artist Group Factors to Musical Genre Classification）</news:title>
   <news:publication_date>2026-05-01T21:46:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685534</loc>
  <lastmod>2026-05-01T21:46:16Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>形態素的に豊かな入力の合成表現（Compositional Representation of Morphologically-Rich Input for Neural Machine Translation）</news:title>
   <news:publication_date>2026-05-01T21:46:16Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685532</loc>
  <lastmod>2026-05-01T21:45:35Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>カメラ位置推定の無監督学習による革新（Position Estimation of Camera Based on Unsupervised Learning）</news:title>
   <news:publication_date>2026-05-01T21:45:35Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685530</loc>
  <lastmod>2026-05-01T21:45:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>非パラメトリックなインスタンス識別による教師なし特徴学習（Unsupervised Feature Learning via Non-Parametric Instance Discrimination）</news:title>
   <news:publication_date>2026-05-01T21:45:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685528</loc>
  <lastmod>2026-05-01T21:44:34Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>圧縮符号化分散計算の要点（Compressed Coded Distributed Computing）</news:title>
   <news:publication_date>2026-05-01T21:44:34Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685526</loc>
  <lastmod>2026-05-01T21:44:26Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>アスペクト別感情分析の諸手法（Various Approaches to Aspect-based Sentiment Analysis）</news:title>
   <news:publication_date>2026-05-01T21:44:26Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685524</loc>
  <lastmod>2026-05-01T21:43:56Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>MTFH: 異種モダリティ検索を変える可変長ハッシュ学習（MTFH: A Matrix Tri-Factorization Hashing Framework for Efficient Cross-Modal Retrieval）</news:title>
   <news:publication_date>2026-05-01T21:43:56Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685522</loc>
  <lastmod>2026-05-01T20:52:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>動的で意思決定する複数主体の間の経路計画と深層強化学習（Motion Planning Among Dynamic, Decision-Making Agents with Deep Reinforcement Learning）</news:title>
   <news:publication_date>2026-05-01T20:52:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685520</loc>
  <lastmod>2026-05-01T20:52:06Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>気象センサデータに基づく降水検出のデータ駆動型アプローチ (A DATA-DRIVEN APPROACH TO DETECTING PRECIPITATION FROM METEOROLOGICAL SENSOR DATA)</news:title>
   <news:publication_date>2026-05-01T20:52:06Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685518</loc>
  <lastmod>2026-05-01T20:51:19Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>観察からの行動模倣（Behavioral Cloning from Observation）</news:title>
   <news:publication_date>2026-05-01T20:51:19Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685516</loc>
  <lastmod>2026-05-01T20:50:27Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>超伝導オプトエレクトロニックニューロンの可塑性（Superconducting Optoelectronic Neurons III: Synaptic Plasticity）</news:title>
   <news:publication_date>2026-05-01T20:50:27Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685514</loc>
  <lastmod>2026-05-01T20:50:19Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>風からより多くを得る：ベッツの法則を複数タービンへ拡張する（Getting More Out of the Wind: Extending Betz’s Law to Multiple Turbines）</news:title>
   <news:publication_date>2026-05-01T20:50:19Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685512</loc>
  <lastmod>2026-05-01T20:50:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>暗闇で見る技術の進化（Learning to See in the Dark）</news:title>
   <news:publication_date>2026-05-01T20:50:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685510</loc>
  <lastmod>2026-05-01T20:49:40Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>重みプルーニングによる正則化効果の強化（ENHANCING THE REGULARIZATION EFFECT OF WEIGHT PRUNING IN ARTIFICIAL NEURAL NETWORKS）</news:title>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
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   <news:publication_date>2026-05-01T19:57:13Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685506</loc>
  <lastmod>2026-05-01T19:56:58Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>探索のための分布強化学習（Exploration by Distributional Reinforcement Learning）</news:title>
   <news:publication_date>2026-05-01T19:56:58Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685504</loc>
  <lastmod>2026-05-01T19:56:27Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>カメラレンズのMTFを自動推定する方法（Automatic Estimation of Modulation Transfer Functions）</news:title>
   <news:publication_date>2026-05-01T19:56:27Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685502</loc>
  <lastmod>2026-05-01T19:55:40Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>測定されない交絡がある場合のアルゴリズム的意思決定（Algorithmic Decision Making in the Presence of Unmeasured Confounding）</news:title>
   <news:publication_date>2026-05-01T19:55:40Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685500</loc>
  <lastmod>2026-05-01T19:55:30Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>LASSOのハイパーパラメータ選択におけるヘッジ手法の提案（Hedging parameter selection for basis pursuit）</news:title>
   <news:publication_date>2026-05-01T19:55:30Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685498</loc>
  <lastmod>2026-05-01T19:55:14Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>複雑微細組織の高スループット定量計測に深層学習を使う（High throughput quantitative metallography for complex microstructures using deep learning）</news:title>
   <news:publication_date>2026-05-01T19:55:14Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685496</loc>
  <lastmod>2026-05-01T19:54:36Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>選好学習のベイズ型能動学習と深いガウス過程（Bayesian active learning for choice models with deep Gaussian processes）</news:title>
   <news:publication_date>2026-05-01T19:54:36Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685494</loc>
  <lastmod>2026-05-01T19:03:21Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>リモートセンシングと機械学習でデング熱媒介蚊の発生を予測する（Modeling Dengue Vector Population Using Remotely Sensed Data and Machine Learning）</news:title>
   <news:publication_date>2026-05-01T19:03:21Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685492</loc>
  <lastmod>2026-05-01T19:03:06Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>L2-Boostingにおける選択的推論の実践と意義（Selective Inference for L2-Boosting）</news:title>
   <news:publication_date>2026-05-01T19:03:06Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685490</loc>
  <lastmod>2026-05-01T19:01:13Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ログ正規混合モデルによる学習オンライン行動の時間推定（Time-on-Task Estimation with Log-Normal Mixture Model）</news:title>
   <news:publication_date>2026-05-01T19:01:13Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685488</loc>
  <lastmod>2026-05-01T19:00:57Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>DNNデータフローの再利用性・性能・ハードウェアコストの理解（Understanding Reuse, Performance, and Hardware Cost of DNN Dataflows: A Data-Centric Approach Using MAESTRO）</news:title>
   <news:publication_date>2026-05-01T19:00:57Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685486</loc>
  <lastmod>2026-05-01T19:00:44Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>オブジェクトとテキスト誘導セマンティクスによるCNNベースの活動認識（OBJECT AND TEXT-GUIDED SEMANTICS FOR CNN-BASED ACTIVITY RECOGNITION）</news:title>
   <news:publication_date>2026-05-01T19:00:44Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685484</loc>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>運転自動化における失敗予測（Failure Prediction for Autonomous Driving）</news:title>
   <news:publication_date>2026-05-01T18:08:23Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685482</loc>
  <lastmod>2026-05-01T18:08:07Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>携帯端末上での深層学習による作物病害監視の検証（Assessing a mobile-based deep learning model for plant disease surveillance）</news:title>
   <news:publication_date>2026-05-01T18:08:07Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685480</loc>
  <lastmod>2026-05-01T18:07:40Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>医用画像における概念検出のための教師なし学習比較（Unsupervised learning for concept detection in medical images: a comparative analysis）</news:title>
   <news:publication_date>2026-05-01T18:07:40Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685478</loc>
  <lastmod>2026-05-01T18:05:32Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>DISCUS：小型キューブサットで小惑星の内部を探る（DISCUS - The Deep Interior Scanning CubeSat mission to a rubble pile near-Earth asteroid）</news:title>
   <news:publication_date>2026-05-01T18:05:32Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685476</loc>
  <lastmod>2026-05-01T18:05:21Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>大規模機械学習における動的制御フローの実装と意義（Dynamic Control Flow in Large-Scale Machine Learning）</news:title>
   <news:publication_date>2026-05-01T18:05:21Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685474</loc>
  <lastmod>2026-05-01T18:05:05Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>グレイ機械学習の導入と要点（A brief introduction to the Grey Machine Learning）</news:title>
   <news:publication_date>2026-05-01T18:05:05Z</news:publication_date>
   <news:genres>Blog</news:genres>
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 </url>
 <url>
  <loc>https://aibr.jp/archives/685472</loc>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-01T17:12:28Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685470</loc>
  <lastmod>2026-05-01T17:11:18Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>時系列をクラスタリングするための量子力学的手法（Using Quantum Mechanics to Cluster Time Series）</news:title>
   <news:publication_date>2026-05-01T17:11:18Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685468</loc>
  <lastmod>2026-05-01T17:11:03Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>多コアプロセッサ上での深層学習性能チューニング（Performance tuning for deep learning on a many-core processor）</news:title>
   <news:publication_date>2026-05-01T17:11:03Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685466</loc>
  <lastmod>2026-05-01T17:10:26Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>脳内エラー検出における深層学習（Intracranial Error Detection via Deep Learning）</news:title>
   <news:publication_date>2026-05-01T17:10:26Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685464</loc>
  <lastmod>2026-05-01T17:10:11Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-01T17:10:11Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685462</loc>
  <lastmod>2026-05-01T17:09:57Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>クリック率を超えて：多段階フィードバックを考慮したウェブリンク選択（Beyond the Click-Through Rate: Web Link Selection with Multi-level Feedback）</news:title>
   <news:publication_date>2026-05-01T17:09:57Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685460</loc>
  <lastmod>2026-05-01T17:09:42Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>限られたデータからの画像生成のためのGAN移転（Transferring GANs: generating images from limited data）</news:title>
   <news:publication_date>2026-05-01T17:09:42Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685458</loc>
  <lastmod>2026-05-01T16:17:38Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>FPGAで実現するハードウェア対応リザバーコンピューティングの効率設計（Efficient Design of Hardware-Enabled Reservoir Computing in FPGAs）</news:title>
   <news:publication_date>2026-05-01T16:17:38Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685456</loc>
  <lastmod>2026-05-01T16:07:23Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>IntelCaffeによる8ビット低精度推論の実装と評価（Highly Efficient 8-bit Low Precision Inference of Convolutional Neural Networks with IntelCaffe）</news:title>
   <news:publication_date>2026-05-01T16:07:23Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685454</loc>
  <lastmod>2026-05-01T16:07:06Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:publication_date>2026-05-01T16:07:06Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685452</loc>
  <lastmod>2026-05-01T16:05:27Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>Langevin Monte Carloの非凸設定における収束速度（Convergence Rates for Langevin Monte Carlo in the Nonconvex Setting）</news:title>
   <news:publication_date>2026-05-01T16:05:27Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685450</loc>
  <lastmod>2026-05-01T16:04:44Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>部分線形データ領域における学習可能性の推定 (Estimating Learnability in the Sublinear Data Regime)</news:title>
   <news:publication_date>2026-05-01T16:04:44Z</news:publication_date>
   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685448</loc>
  <lastmod>2026-05-01T16:04:36Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>確率的マルチアームバンディットへの情報幾何学的アプローチ（BelMan: An Information-Geometric Approach to Stochastic Bandits）</news:title>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685446</loc>
  <lastmod>2026-05-01T16:04:20Z</lastmod>
  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>分布適応型回帰の実務的意義（Distribution Assertive Regression）</news:title>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
  <loc>https://aibr.jp/archives/685444</loc>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>ジェネリック自律進化型ニューラルファジー制御器による高性能ヘキサコプター高度制御（A Generic Self-Evolving Neuro-Fuzzy Controller based High-performance Hexacopter Altitude Control System）</news:title>
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   <news:genres>Blog</news:genres>
  </news:news>
 </url>
 <url>
  <loc>https://aibr.jp/archives/685442</loc>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
    <news:language>ja</news:language>
   </news:publication>
   <news:title>pytrec_eval の実務的意義と速さの源泉（Pytrec_eval: An Extremely Fast Python Interface to trec_eval）</news:title>
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   <news:genres>Blog</news:genres>
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 </url>
 <url>
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  <news:news>
   <news:publication>
    <news:name>AI Benchmark Research</news:name>
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 <url>
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