Understanding Dynamic Diffusion Process of LLM-based Agents under Information Asymmetry
- URL: http://arxiv.org/abs/2502.13160v1
- Date: Sun, 16 Feb 2025 03:02:48 GMT
- Title: Understanding Dynamic Diffusion Process of LLM-based Agents under Information Asymmetry
- Authors: Yiwen Zhang, Yifu Wu, Wenyue Hua, Xuming Hu,
- Abstract summary: We study the dynamics of information diffusion in 12 asymmetric open environments defined by information content and distribution mechanisms.
We design a dynamic attention mechanism to help agents allocate attention to different information.
We observe the emergence of information cocoons, the evolution of information gaps, and the accumulation of social capital.
- Score: 25.531407745300946
- License:
- Abstract: Large language models have been used to simulate human society using multi-agent systems. Most current social simulation research emphasizes interactive behaviors in fixed environments, ignoring information opacity, relationship variability and diffusion diversity. In this paper, we study the dynamics of information diffusion in 12 asymmetric open environments defined by information content and distribution mechanisms. We first present a general framework to capture the features of information diffusion. Then, we designed a dynamic attention mechanism to help agents allocate attention to different information, addressing the limitations of LLM-based attention. Agents start by responding to external information stimuli within a five-agent group, increasing group size and forming information circles while developing relationships and sharing information. Additionally, we observe the emergence of information cocoons, the evolution of information gaps, and the accumulation of social capital, which are closely linked to psychological, sociological, and communication theories.
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