AI RESEARCH
ReCrit: Transition-Aware Reinforcement Learning for Scientific Critic Reasoning
arXiv CS.AI
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ArXi:2605.18799v1 Announce Type: cross Large language models can fail in critic interaction not only by answering incorrectly, but also by abandoning an initially correct scientific solution after user criticism. This is especially risky in scientific reasoning, where user criticism can turn a valid answer into an incorrect one. We frame critic interaction as an inter-turn correctness-transition problem rather than a final-answer accuracy problem, and identify three challenges: transition awareness, decoupling useful correction from harmful sycophancy, and scalable rollout.