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Main Authors: Liu, Yijun, Liu, Wu, Gu, Xiaoyan, Yao, Hantao, Wang, Weiping, Luo, Jiebo, Zhang, Yongdong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.02172
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author Liu, Yijun
Liu, Wu
Gu, Xiaoyan
Yao, Hantao
Wang, Weiping
Luo, Jiebo
Zhang, Yongdong
author_facet Liu, Yijun
Liu, Wu
Gu, Xiaoyan
Yao, Hantao
Wang, Weiping
Luo, Jiebo
Zhang, Yongdong
contents Rumor propagation modeling is critical for understanding and mitigating misinformation. Existing approaches combining rule-based regular agents with LLM-driven core agents provide a promising paradigm for large-scale rumor simulation. However, overlooking the dynamic nature of core agents and the importance of network topology on rumor spread significantly undermines the simulation performance. To address these issues, we present RumorSphere, a dynamic and hierarchical resonance framework for effective rumor simulation at the million-agent scale. Considering the dynamic role of core agents in rumor evolution, we propose a multi-agent dynamic interaction strategy based on the information cocoon theory, which adaptively identifies and activates critical core agents at conflict boundaries using LLMs, effectively supporting simulations with millions of agents. In addition, we design a hierarchical resonance network that integrates opinion leaders and localized community structures, enabling more realistic modeling of explosive rumor spread in real-world scenarios. Experiments on real-world datasets show that RumorSphere outperforms state-of-the-art methods, reducing simulation bias by an average of 26.5%.
format Preprint
id arxiv_https___arxiv_org_abs_2509_02172
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RumorSphere: A Framework for Million-scale Agent-based Dynamic Simulation of Rumor Propagation
Liu, Yijun
Liu, Wu
Gu, Xiaoyan
Yao, Hantao
Wang, Weiping
Luo, Jiebo
Zhang, Yongdong
Social and Information Networks
Rumor propagation modeling is critical for understanding and mitigating misinformation. Existing approaches combining rule-based regular agents with LLM-driven core agents provide a promising paradigm for large-scale rumor simulation. However, overlooking the dynamic nature of core agents and the importance of network topology on rumor spread significantly undermines the simulation performance. To address these issues, we present RumorSphere, a dynamic and hierarchical resonance framework for effective rumor simulation at the million-agent scale. Considering the dynamic role of core agents in rumor evolution, we propose a multi-agent dynamic interaction strategy based on the information cocoon theory, which adaptively identifies and activates critical core agents at conflict boundaries using LLMs, effectively supporting simulations with millions of agents. In addition, we design a hierarchical resonance network that integrates opinion leaders and localized community structures, enabling more realistic modeling of explosive rumor spread in real-world scenarios. Experiments on real-world datasets show that RumorSphere outperforms state-of-the-art methods, reducing simulation bias by an average of 26.5%.
title RumorSphere: A Framework for Million-scale Agent-based Dynamic Simulation of Rumor Propagation
topic Social and Information Networks
url https://arxiv.org/abs/2509.02172