One-shot Entropy Minimization
May 26, 2025
Authors: Zitian Gao, Lynx Chen, Joey Zhou, Bryan Dai
cs.AI
Abstract
We trained 13,440 large language models and found that entropy minimization requires only a single unlabeled data and 10 steps optimization to achieve performance improvements comparable to or even greater than those obtained using thousands of data and carefully designed rewards in rule-based reinforcement learning. This striking result may prompt a rethinking of post-training paradigms for large language models. Our code is avaliable at https://github.com/zitian-gao/one-shot-em.
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