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Quantifying and Understanding Uncertainty in Large Reasoning Models

arXiv:2604.1339591.8h-index: 21
Predicted impact top 17% in AI · last 90 daysOriginality Highly original
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For practitioners deploying large reasoning models, this work provides statistically rigorous uncertainty quantification and interpretability, addressing a critical need for reliability in high-stakes reasoning tasks.

This paper proposes a conformal prediction-based method to quantify uncertainty in large reasoning models with finite-sample guarantees, and develops a Shapley value-based explanation framework to identify key training examples and reasoning steps. Experiments on challenging reasoning datasets validate the effectiveness.

Large Reasoning Models (LRMs) have recently demonstrated significant improvements in complex reasoning. While quantifying generation uncertainty in LRMs is crucial, traditional methods are often insufficient because they do not provide finite-sample guarantees for reasoning-answer generation. Conformal prediction (CP) stands out as a distribution-free and model-agnostic methodology that constructs statistically rigorous uncertainty sets. However, existing CP methods ignore the logical connection between the reasoning trace and the final answer. Additionally, prior studies fail to interpret the origins of uncertainty coverage for LRMs as they typically overlook the specific training factors driving valid reasoning. Notably, it is challenging to disentangle reasoning quality from answer correctness when quantifying uncertainty, while simultaneously establishing theoretical guarantees for computationally efficient explanation methods. To address these challenges, we first propose a novel methodology that quantifies uncertainty in the reasoning-answer structure with statistical guarantees. Subsequently, we develop a unified example-to-step explanation framework using Shapley values that identifies a provably sufficient subset of training examples and their key reasoning steps to preserve the guarantees. We also provide theoretical analyses of our proposed methods. Extensive experiments on challenging reasoning datasets verify the effectiveness of the proposed methods.

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