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arxiv:2505.24858

MetaFaith: Faithful Natural Language Uncertainty Expression in LLMs

Published on May 30
· Submitted by johncliu on Jun 2
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Abstract

A study reveals that Large Language Models (LLMs) struggle with expressing uncertainty accurately and introduces MetaFaith, a prompt-based method that enhances their calibration significantly.

AI-generated summary

A critical component in the trustworthiness of LLMs is reliable uncertainty communication, yet LLMs often use assertive language when conveying false claims, leading to over-reliance and eroded trust. We present the first systematic study of faithful confidence calibration of LLMs, benchmarking models' ability to use linguistic expressions of uncertainty that faithfully reflect their intrinsic uncertainty, across a comprehensive array of models, datasets, and prompting strategies. Our results demonstrate that LLMs largely fail at this task, and that existing interventions are insufficient: standard prompt approaches provide only marginal gains, and existing, factuality-based calibration techniques can even harm faithful calibration. To address this critical gap, we introduce MetaFaith, a novel prompt-based calibration approach inspired by human metacognition. We show that MetaFaith robustly improves faithful calibration across diverse models and task domains, enabling up to 61% improvement in faithfulness and achieving an 83% win rate over original generations as judged by humans.

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A novel approach inspired by human metacognition to improve the faithfulness of LLMs' expressions of uncertainty.

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