Tracing Uncertainty in Language Model "Reasoning"
This work provides a principled method for understanding and predicting LM reasoning quality, benefiting researchers and practitioners seeking to interpret or improve chain-of-thought processes.
The authors propose uncertainty trace profiles to characterize language model reasoning dynamics, achieving AUROC up to 0.807 in predicting answer correctness across five LMs on GSM8K and ProntoQA, with early detection possible using only the first few hundred tokens.
Language model (LM) "reasoning", commonly described as Chain-of-Thought or test-time scaling, often improves benchmark performance, but the dynamics underlying this process remain poorly understood. We study these dynamics through the lens of uncertainty quantification by treating the "reasoning" traces, the intermediate token sequences generated by LMs, as evolving model states. We summarize each trace by an uncertainty trace profile: a small set of features describing the shape of the uncertainty signal over its trace, such as its slope and linearity. We find that across five LMs evaluated on GSM8K and ProntoQA, these profiles predict whether a trace yields a correct final answer with AUROC up to 0.807, improving markedly on recent related work. We reach AUROC 0.801 using only the first few hundred tokens of full traces, suggesting that errors can be detected early in the generation. A detailed comparison of correct and incorrect traces further reveals qualitatively distinct uncertainty profiles, with correct traces showing a steeper and less linear decline in uncertainty. Together, the results suggest that our method, grounded in decision-making under uncertainty, provides a principled lens for studying the generative process underlying LM "reasoning".