Complementary Reinforcement Learning
arXiv cs.LG / 3/19/2026
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Key Points
- Complementary RL introduces a co-evolving experience extractor and policy actor within the RL loop to improve sample efficiency for LLM-based agents.
- It addresses the problem where past experience is static or misaligned with the actor's evolving capabilities by letting the experience management adapt in lockstep with learning.
- The method optimizes the actor with sparse outcome-based rewards while training the experience extractor to maximize its contributed impact on the actor's success.
- Empirical results show about a 10% performance boost in single-task settings and robust scalability in multi-task scenarios, signaling a promising new paradigm for experience-driven agent learning.
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