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Towards Harmonized Uncertainty Estimation for Large Language Models

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To facilitate robust and trustworthy deployment of large language models (LLMs), it is essential to quantify the reliability of their generations through uncertainty estimation. While recent efforts have made significant advancements by leveraging the internal logic and linguistic features of LLMs to estimate uncertainty scores, our empirical analysis highlights the pitfalls of these methods to strike a harmonized estimation between indication, balance, and calibration, which hinders their broader capability for accurate uncertainty estimation. To address this challenge, we propose CUE (Corrector for Uncertainty Estimation): A straightforward yet effective method that employs a lightweight model trained on data aligned with the target LLM's performance to adjust uncertainty scores. Comprehensive experiments across diverse models and tasks demonstrate its effectiveness, which achieves consistent improvements of up to 60% over existing methods.

Rui Li, Jing Long, Muge Qi, Heming Xia, Lei Sha, Peiyi Wang, Zhifang Sui• 2025

Related benchmarks

TaskDatasetResultRank
Uncertainty EstimationTriviaQA (test)
AUROC82.12
78
CalibrationNQ
ECE0.4178
55
CalibrationMMLU
Brier Score0.2856
42
CalibrationTriviaQA
Brier Score0.2197
39
Uncertainty EstimationSciQA
AUROC0.7572
36
CalibrationWebQ
ECE0.2469
31
CalibrationSQuAD
ECE39.06
31
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