AI RESEARCH
From Entropy to Calibrated Uncertainty: Training Language Models to Reason About Uncertainty
arXiv CS.AI
•
ArXi:2603.06317v1 Announce Type: cross Large Language Models (LLMs) that can express interpretable and calibrated uncertainty are crucial in high-stakes domains. While methods to compute uncertainty post-hoc exist, they are often sampling-based and therefore computationally expensive or lack calibration. We propose a three-stage pipeline to post-train LLMs to efficiently infer calibrated uncertainty estimates for their responses. First, we compute fine-grained entropy-based uncertainty scores on the.