AI RESEARCH
Think Through Uncertainty: Improving Long-Form Generation Factuality via Reasoning Calibration
arXiv CS.CL
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ArXi:2604.12046v1 Announce Type: new Large language models (LLMs) often hallucinate in long-form generation. Existing approaches mainly improve factuality through post-hoc revision or reinforcement learning (RL) with correctness-based rewards, but they do not teach the model to estimate which parts of its generation are reliable. As a result, models may still state incorrect claims confidently in their responses. Recent advances in reasoning have significantly improved LLM performance, and have been leveraged to estimate confidence by incorporating calibration into RL objectives.