SIAIMAOct 16, 2024

Large Language Model-driven Multi-Agent Simulation for News Diffusion Under Different Network Structures

arXiv:2410.13909v121 citationsh-index: 48
Originality Incremental advance
AI Analysis

This addresses the critical issue of misinformation spread for societal trust and democratic processes, offering an incremental improvement over traditional agent-based models by incorporating LLM-driven agents.

This work tackles the problem of fake news proliferation by using a large language model-driven multi-agent simulation to replicate complex interactions in information ecosystems, demonstrating that brute-force blocking of influential agents or announcing news accuracy can effectively mitigate misinformation, though effectiveness depends on network structure.

The proliferation of fake news in the digital age has raised critical concerns, particularly regarding its impact on societal trust and democratic processes. Diverging from conventional agent-based simulation approaches, this work introduces an innovative approach by employing a large language model (LLM)-driven multi-agent simulation to replicate complex interactions within information ecosystems. We investigate key factors that facilitate news propagation, such as agent personalities and network structures, while also evaluating strategies to combat misinformation. Through simulations across varying network structures, we demonstrate the potential of LLM-based agents in modeling the dynamics of misinformation spread, validating the influence of agent traits on the diffusion process. Our findings emphasize the advantages of LLM-based simulations over traditional techniques, as they uncover underlying causes of information spread -- such as agents promoting discussions -- beyond the predefined rules typically employed in existing agent-based models. Additionally, we evaluate three countermeasure strategies, discovering that brute-force blocking influential agents in the network or announcing news accuracy can effectively mitigate misinformation. However, their effectiveness is influenced by the network structure, highlighting the importance of considering network structure in the development of future misinformation countermeasures.

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