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Main Authors: Qu, Jiaming, fu, Lucheng, Hu, Yibo
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2606.01637
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author Qu, Jiaming
fu, Lucheng
Hu, Yibo
author_facet Qu, Jiaming
fu, Lucheng
Hu, Yibo
contents Large language models are increasingly used in multi-agent systems, where they see and respond to other agents' answers. A key risk is conformity: a model may abandon its own answer simply because others agree on a different one. Prior studies show that LLMs often revise toward a majority answer, but it remains unclear whether these revisions help correct mistakes as often as they introduce new errors. In this paper, we conduct a controlled study in which an LLM first answers a question, then sees simulated peer responses before making a final decision. We manipulate two social cues: consensus structure and authority labels assigned to peers, and measure how they influence beneficial and harmful revisions. Across four open-weight LLMs and seven QA datasets, we find that peer agreement makes it much easier to mislead initially correct models than to correct initially wrong ones. Authority labels make models more likely to choose the endorsed answer, regardless of whether it is correct. More concerningly, generic reasoning interventions such as chain-of-thought and reflection do not reliably reduce harmful revision while preserving beneficial revision. These findings suggest that multi-agent LLM systems should verify peer answers rather than simply aggregate them.
format Preprint
id arxiv_https___arxiv_org_abs_2606_01637
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Easier to Mislead Than to Correct: Harmful and Beneficial Revision in LLM Conformity
Qu, Jiaming
fu, Lucheng
Hu, Yibo
Computation and Language
Artificial Intelligence
Large language models are increasingly used in multi-agent systems, where they see and respond to other agents' answers. A key risk is conformity: a model may abandon its own answer simply because others agree on a different one. Prior studies show that LLMs often revise toward a majority answer, but it remains unclear whether these revisions help correct mistakes as often as they introduce new errors. In this paper, we conduct a controlled study in which an LLM first answers a question, then sees simulated peer responses before making a final decision. We manipulate two social cues: consensus structure and authority labels assigned to peers, and measure how they influence beneficial and harmful revisions. Across four open-weight LLMs and seven QA datasets, we find that peer agreement makes it much easier to mislead initially correct models than to correct initially wrong ones. Authority labels make models more likely to choose the endorsed answer, regardless of whether it is correct. More concerningly, generic reasoning interventions such as chain-of-thought and reflection do not reliably reduce harmful revision while preserving beneficial revision. These findings suggest that multi-agent LLM systems should verify peer answers rather than simply aggregate them.
title Easier to Mislead Than to Correct: Harmful and Beneficial Revision in LLM Conformity
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2606.01637