Learning to Self-Evolve
arXiv cs.CL / 3/20/2026
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Key Points
- The paper introduces Learning to Self-Evolve (LSE), a reinforcement learning framework that trains large language models to improve their own contexts at test time by reframing the multi-step evolution problem as a single-step RL objective.
- It uses a tree-guided evolution loop and rewards context edits based on downstream performance improvements, enabling iterative self-improvement during inference.
- In experiments on Text-to-SQL (BIRD) and general question answering (MMLU-Redux), a 4B-parameter model trained with LSE outperforms self-evolving policies powered by GPT-5 and Claude Sonnet 4.5, as well as prompt-optimization methods like GEPA and TextGrad.
- The results suggest that LSE can transfer to guide other models without additional training, highlighting self-evolution as a learnable skill with broad applicability.
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