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Main Authors: Lin, Chichen, Jin, Yijie, Hu, Kangbo, Fan, Weijian, Xiao, Han, Wang, Yongbin, Ying, Zhihui, Zhao, Zhanzhan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.17353
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_version_ 1866909052386148352
author Lin, Chichen
Jin, Yijie
Hu, Kangbo
Fan, Weijian
Xiao, Han
Wang, Yongbin
Ying, Zhihui
Zhao, Zhanzhan
author_facet Lin, Chichen
Jin, Yijie
Hu, Kangbo
Fan, Weijian
Xiao, Han
Wang, Yongbin
Ying, Zhihui
Zhao, Zhanzhan
contents Misinformation resilience is a dynamic community process: communities differ not only in whether they initially trust false claims, but also in how they recover through interaction, questioning, correction, and support withdrawal. We study this process with an LLM-based agent simulation that constructs synthetic communities along two theoretically motivated dimensions: Actively Open-minded Thinking (AOT), which captures evidence-seeking and willingness to revise beliefs, and Political Ideology (PI), which captures identity-based interpretation of contested claims. These two traits allow us to examine how evidence-oriented reasoning and ideological alignment jointly shape community responses to credible misinformation shocks. Across systematically varied AOT-PI communities, we find that higher AOT improves both resistance to misinformation uptake and recovery after trust peaks. PI shapes the recovery pathway: ideologically moderate communities recover more reliably, while polarized communities retain more residual support. Stance-level analysis shows that resilience depends on whether agents move from questioning a claim to denying or correcting it and withdrawing prior support. Intervention experiments further show that persuasion and fact checking better support post-peak correction, whereas accuracy prompts mainly induce early caution and source warnings have weaker effects. Together, this work provides a mechanism-level account of community misinformation resilience, showing how psychological composition and intervention design shape whether communities move from misinformation exposure toward correction or persistent support.
format Preprint
id arxiv_https___arxiv_org_abs_2605_17353
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle You Can't Fool Us: Understanding the Resilience of LLM-driven Agent Communities to Misinformation
Lin, Chichen
Jin, Yijie
Hu, Kangbo
Fan, Weijian
Xiao, Han
Wang, Yongbin
Ying, Zhihui
Zhao, Zhanzhan
Computers and Society
Misinformation resilience is a dynamic community process: communities differ not only in whether they initially trust false claims, but also in how they recover through interaction, questioning, correction, and support withdrawal. We study this process with an LLM-based agent simulation that constructs synthetic communities along two theoretically motivated dimensions: Actively Open-minded Thinking (AOT), which captures evidence-seeking and willingness to revise beliefs, and Political Ideology (PI), which captures identity-based interpretation of contested claims. These two traits allow us to examine how evidence-oriented reasoning and ideological alignment jointly shape community responses to credible misinformation shocks. Across systematically varied AOT-PI communities, we find that higher AOT improves both resistance to misinformation uptake and recovery after trust peaks. PI shapes the recovery pathway: ideologically moderate communities recover more reliably, while polarized communities retain more residual support. Stance-level analysis shows that resilience depends on whether agents move from questioning a claim to denying or correcting it and withdrawing prior support. Intervention experiments further show that persuasion and fact checking better support post-peak correction, whereas accuracy prompts mainly induce early caution and source warnings have weaker effects. Together, this work provides a mechanism-level account of community misinformation resilience, showing how psychological composition and intervention design shape whether communities move from misinformation exposure toward correction or persistent support.
title You Can't Fool Us: Understanding the Resilience of LLM-driven Agent Communities to Misinformation
topic Computers and Society
url https://arxiv.org/abs/2605.17353