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Main Authors: Yu, Chuting, Li, Hang, Zuccon, Guido, Mackenzie, Joel, Leelanupab, Teerapong
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.17170
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author Yu, Chuting
Li, Hang
Zuccon, Guido
Mackenzie, Joel
Leelanupab, Teerapong
author_facet Yu, Chuting
Li, Hang
Zuccon, Guido
Mackenzie, Joel
Leelanupab, Teerapong
contents Human relevance assessment is time-consuming and cognitively intensive, limiting the scalability of Information Retrieval evaluation. This has led to growing interest in using large language models (LLMs) as proxies for human judges. However, it remains an open question whether LLM-based relevance judgments are reliable, stable, and rigorous enough to match humans for relevance assessment. In this work, we conduct a study of \textit{overrating behavior} in LLM-based relevance judgments across model backbones, evaluation paradigms (pointwise and pairwise), and passage modification strategies. We show that models consistently assign inflated relevance scores -- often with high confidence -- to passages that do not genuinely satisfy the underlying information need, revealing a system-wide bias rather than random fluctuations in judgment. Furthermore, controlled experiments show that LLM-based relevance judgments can be highly sensitive to passage length and surface-level lexical cues. These results raise concerns about the usage of LLMs as drop-in replacements for human relevance assessors, and highlight the urgent need for careful diagnostic evaluation frameworks when applying LLMs for relevance assessments. Our code and results are publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2602_17170
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle When LLM Judges Inflate Scores: Exploring Overrating in Relevance Assessment
Yu, Chuting
Li, Hang
Zuccon, Guido
Mackenzie, Joel
Leelanupab, Teerapong
Information Retrieval
Human relevance assessment is time-consuming and cognitively intensive, limiting the scalability of Information Retrieval evaluation. This has led to growing interest in using large language models (LLMs) as proxies for human judges. However, it remains an open question whether LLM-based relevance judgments are reliable, stable, and rigorous enough to match humans for relevance assessment. In this work, we conduct a study of \textit{overrating behavior} in LLM-based relevance judgments across model backbones, evaluation paradigms (pointwise and pairwise), and passage modification strategies. We show that models consistently assign inflated relevance scores -- often with high confidence -- to passages that do not genuinely satisfy the underlying information need, revealing a system-wide bias rather than random fluctuations in judgment. Furthermore, controlled experiments show that LLM-based relevance judgments can be highly sensitive to passage length and surface-level lexical cues. These results raise concerns about the usage of LLMs as drop-in replacements for human relevance assessors, and highlight the urgent need for careful diagnostic evaluation frameworks when applying LLMs for relevance assessments. Our code and results are publicly available.
title When LLM Judges Inflate Scores: Exploring Overrating in Relevance Assessment
topic Information Retrieval
url https://arxiv.org/abs/2602.17170