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simmediumrlmetric · varies

Evolutionary Discovery of Reinforcement Learning Algorithms via Large Language Models

Description

Reinforcement learning algorithms are defined by their learning update rules, which are typically hand-designed and fixed. We present an evolutionary framework for discovering reinforcement learning algorithms by searching directly over executable update rules that implement complete training procedures. The approach builds on REvolve, an evolutionary system that uses large language models as generative variation operators, and extends it from reward-function discovery to algorithm discovery. To

Source

http://arxiv.org/abs/2603.28416v1