AI RESEARCH

Credit Assignment with Resets in Language Model Reasoning

arXiv CS.AI

ArXi:2605.25507v1 Announce Type: new Contemporary reinforcement learning with verifiable reward methods post-train language models on multi-step reasoning by assigning a single outcome reward uniformly across all tokens in a trajectory. Such uniform assignment ignores which steps contributed to success or failure. Improving credit assignment can address this limitation by enabling targeted refinement of faulty reasoning steps, rather than updating entire trajectories uniformly.