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How I Study AI - Learn AI Papers & Lectures the Easy Way

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All SourcesarXiv
#Shapley value

Grounding and Enhancing Informativeness and Utility in Dataset Distillation

Intermediate
Shaobo Wang, Yantai Yang et al.Jan 29arXiv

This paper tackles dataset distillation by giving a clear, math-backed way to keep only the most useful bits of data, so models can learn well from far fewer images.

#dataset distillation#data condensation#Shapley value

Collaborative Multi-Agent Test-Time Reinforcement Learning for Reasoning

Intermediate
Zhiyuan Hu, Yunhai Hu et al.Jan 14arXiv

This paper introduces MATTRL, a way for multiple AI agents to learn from their own conversations at test time using short, reusable text notes instead of retraining their weights.

#multi-agent systems#test-time reinforcement learning#experience retrieval