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			<title>Small, Private Language Models as Teammates for Educational Assessment Design</title>
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			<title>BRIDGE: Building Representations In Domain Guided Program Synthesis</title>
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			<title>It Takes Two: Your GRPO Is Secretly DPO</title>
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			<title>On the Burden of Achieving Fairness in Conformal Prediction</title>
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			<title>EMA: Efficient Model Adaptation for Learning-based Systems</title>
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			<title>Collaborative Yet Personalized Policy Training: Single-Timescale Federated Actor-Critic</title>
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			<title>Beyond the Final Answer: Evaluating the Reasoning Trajectories of Tool-Augmented Agents</title>
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			<title>Orchard: An Open-Source Agentic Modeling Framework</title>
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			<guid><![CDATA[https://provide.ai/training-free-generative-sampling-via-moment-matched-score-smoothing/]]></guid>
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			<title>Training-Free Generative Sampling via Moment-Matched Score Smoothing</title>
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			<title>ScaLoRA: Optimally Scaled Low-Rank Adaptation for Efficient High-Rank Fine-Tuning</title>
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			<guid><![CDATA[https://provide.ai/xtinyu-net-training-free-u-net-scaling-via-initialization-time-sensitivity-2/]]></guid>
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			<title>XTinyU-Net: Training-Free U-Net Scaling via Initialization-Time Sensitivity</title>
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			<title>Achieving Approximate Symmetry Is Exponentially Easier than Exact Symmetry</title>
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			<title>Non-Stationary Online Structured Prediction with Surrogate Losses</title>
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			<title>Modeling Bounded Rationality in Drug Shortage Pharmacists Using Attention-Guided Dynamic Decomposition</title>
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			<guid><![CDATA[https://provide.ai/pause-and-reflect-conformal-aggregation-for-chain-of-thought-reasoning/]]></guid>
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			<title>Pause and Reflect: Conformal Aggregation for Chain-of-Thought Reasoning</title>
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			<guid><![CDATA[https://provide.ai/towards-the-next-frontier-of-llms-training-on-private-data-a-cross-domain-benchmark-for-federated-fine-tuning/]]></guid>
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			<title>Towards the Next Frontier of LLMs, Training on Private Data: A Cross-Domain Benchmark for Federated Fine-Tuning</title>
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			<guid><![CDATA[https://provide.ai/unitrigen-unified-triplet-generation-of-aligned-visible-infrared-label-for-few-shot-rgb-t-semantic-segmentation/]]></guid>
			<link><![CDATA[https://provide.ai/unitrigen-unified-triplet-generation-of-aligned-visible-infrared-label-for-few-shot-rgb-t-semantic-segmentation/]]></link>
			<title>UniTriGen: Unified Triplet Generation of Aligned Visible-Infrared-Label for Few-Shot RGB-T Semantic Segmentation</title>
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			<guid><![CDATA[https://provide.ai/case-based-calibration-of-adaptive-reasoning-and-execution-for-llm-tool-use/]]></guid>
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			<title>Case-Based Calibration of Adaptive Reasoning and Execution for LLM Tool Use</title>
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			<guid><![CDATA[https://provide.ai/frontiersmith-synthesizing-open-ended-coding-problems-at-scale/]]></guid>
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			<title>FrontierSmith: Synthesizing Open-Ended Coding Problems at Scale</title>
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			<guid><![CDATA[https://provide.ai/diffusionopd-a-unified-perspective-of-on-policy-distillation-in-diffusion-models/]]></guid>
			<link><![CDATA[https://provide.ai/diffusionopd-a-unified-perspective-of-on-policy-distillation-in-diffusion-models/]]></link>
			<title>DiffusionOPD: A Unified Perspective of On-Policy Distillation in Diffusion Models</title>
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			<guid><![CDATA[https://provide.ai/catching-the-infection-before-it-spreads-foresight-guided-defense-in-multi-agent-systems-3/]]></guid>
			<link><![CDATA[https://provide.ai/catching-the-infection-before-it-spreads-foresight-guided-defense-in-multi-agent-systems-3/]]></link>
			<title>Catching the Infection Before It Spreads: Foresight-Guided Defense in Multi-Agent Systems</title>
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			<guid><![CDATA[https://provide.ai/to-discretize-continually-mean-shift-interacting-particle-systems-for-bayesian-inference/]]></guid>
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			<title>To discretize continually: Mean shift interacting particle systems for Bayesian inference</title>
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			<guid><![CDATA[https://provide.ai/evolvememself-evolving-memory-architecture-via-autoresearch-for-llm-agents/]]></guid>
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			<title>EvolveMem:Self-Evolving Memory Architecture via AutoResearch for LLM Agents</title>
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			<guid><![CDATA[https://provide.ai/cuicurate-a-graphrag-based-framework-for-automated-clinical-concept-curation-for-nlp-applications/]]></guid>
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			<title>CUICurate: A GraphRAG-based Framework for Automated Clinical Concept Curation for NLP applications</title>
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			<guid><![CDATA[https://provide.ai/maple-self-supervised-learning-enhanced-nonlinear-dimensionality-reduction-for-visual-analysis/]]></guid>
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			<title>MAPLE: Self-Supervised Learning-Enhanced Nonlinear Dimensionality Reduction for Visual Analysis</title>
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			<guid><![CDATA[https://provide.ai/amid-knowledge-distillation-for-llms-with-alpha-mixture-assistant-distribution/]]></guid>
			<link><![CDATA[https://provide.ai/amid-knowledge-distillation-for-llms-with-alpha-mixture-assistant-distribution/]]></link>
			<title>AMiD: Knowledge Distillation for LLMs with $\alpha$-mixture Assistant Distribution</title>
			<pubDate><![CDATA[Fri, 15 May 2026 04:00:00 +0000]]></pubDate>
		</item>
					<item>
			<guid><![CDATA[https://provide.ai/multiemo-bench-multi-label-visual-emotion-analysis-for-multi-modal-large-language-models/]]></guid>
			<link><![CDATA[https://provide.ai/multiemo-bench-multi-label-visual-emotion-analysis-for-multi-modal-large-language-models/]]></link>
			<title>MultiEmo-Bench: Multi-label Visual Emotion Analysis for Multi-modal Large Language Models</title>
			<pubDate><![CDATA[Fri, 15 May 2026 04:00:00 +0000]]></pubDate>
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