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Confidence Estimation for LLMs in Multi-turn Interactions

Published: January 5, 2026 | arXiv ID: 2601.02179v1

By: Caiqi Zhang , Ruihan Yang , Xiaochen Zhu and more

Potential Business Impact:

Helps AI know when it's unsure talking.

Business Areas:
Semantic Search Internet Services

While confidence estimation is a promising direction for mitigating hallucinations in Large Language Models (LLMs), current research dominantly focuses on single-turn settings. The dynamics of model confidence in multi-turn conversations, where context accumulates and ambiguity is progressively resolved, remain largely unexplored. Reliable confidence estimation in multi-turn settings is critical for many downstream applications, such as autonomous agents and human-in-the-loop systems. This work presents the first systematic study of confidence estimation in multi-turn interactions, establishing a formal evaluation framework grounded in two key desiderata: per-turn calibration and monotonicity of confidence as more information becomes available. To facilitate this, we introduce novel metrics, including a length-normalized Expected Calibration Error (InfoECE), and a new "Hinter-Guesser" paradigm for generating controlled evaluation datasets. Our experiments reveal that widely-used confidence techniques struggle with calibration and monotonicity in multi-turn dialogues. We propose P(Sufficient), a logit-based probe that achieves comparatively better performance, although the task remains far from solved. Our work provides a foundational methodology for developing more reliable and trustworthy conversational agents.

Country of Origin
🇨🇳 🇬🇧 China, United Kingdom

Page Count
16 pages

Category
Computer Science:
Computation and Language