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Autori principali: Wang, Yuhan, Ni, Shiyu, Ding, Zhikai, Zhan, Zihang, Li, Yuanzi, Bi, Keping
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2602.07842
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author Wang, Yuhan
Ni, Shiyu
Ding, Zhikai
Zhan, Zihang
Li, Yuanzi
Bi, Keping
author_facet Wang, Yuhan
Ni, Shiyu
Ding, Zhikai
Zhan, Zihang
Li, Yuanzi
Bi, Keping
contents Confidence calibration is essential for making large language models (LLMs) reliable, yet existing training-free methods have been primarily studied under single-answer question answering. In this paper, we show that these methods break down in the presence of multiple valid answers, where disagreement among equally correct responses leads to systematic underestimation of confidence. To enable a systematic study of this phenomenon, we introduce MACE, a benchmark of 12,000 factual questions spanning six domains with varying numbers of correct answers. Experiments across 15 representative calibration methods and four LLM families (7B-72B) reveal that while accuracy increases with answer cardinality, estimated confidence consistently decreases, causing severe miscalibration for questions with mixed answer counts. To address this issue, we propose Semantic Confidence Aggregation (SCA), which aggregates confidence over multiple high-probability sampled responses. SCA achieves state-of-the-art calibration performance under mixed-answer settings while preserving strong calibration on single-answer questions.
format Preprint
id arxiv_https___arxiv_org_abs_2602_07842
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Evaluating and Calibrating LLM Confidence on Questions with Multiple Correct Answers
Wang, Yuhan
Ni, Shiyu
Ding, Zhikai
Zhan, Zihang
Li, Yuanzi
Bi, Keping
Computation and Language
Confidence calibration is essential for making large language models (LLMs) reliable, yet existing training-free methods have been primarily studied under single-answer question answering. In this paper, we show that these methods break down in the presence of multiple valid answers, where disagreement among equally correct responses leads to systematic underestimation of confidence. To enable a systematic study of this phenomenon, we introduce MACE, a benchmark of 12,000 factual questions spanning six domains with varying numbers of correct answers. Experiments across 15 representative calibration methods and four LLM families (7B-72B) reveal that while accuracy increases with answer cardinality, estimated confidence consistently decreases, causing severe miscalibration for questions with mixed answer counts. To address this issue, we propose Semantic Confidence Aggregation (SCA), which aggregates confidence over multiple high-probability sampled responses. SCA achieves state-of-the-art calibration performance under mixed-answer settings while preserving strong calibration on single-answer questions.
title Evaluating and Calibrating LLM Confidence on Questions with Multiple Correct Answers
topic Computation and Language
url https://arxiv.org/abs/2602.07842