cs.AI updates on arXiv.org 10月23日 12:10
LLM模拟框架研究在线社交动态
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本文提出一种多智能体LLM模拟框架,通过行为奖励函数模拟人类在线行为,研究网络结构和群体形成,并揭示LLM中集体动态与人类社交行为的相似性与差异。

arXiv:2510.19299v1 Announce Type: new Abstract: Can large language model (LLM) agents reproduce the complex social dynamics that characterize human online behavior -- shaped by homophily, reciprocity, and social validation -- and what memory and learning mechanisms enable such dynamics to emerge? We present a multi-agent LLM simulation framework in which agents repeatedly interact, evaluate one another, and adapt their behavior through in-context learning accelerated by a coaching signal. To model human social behavior, we design behavioral reward functions that capture core drivers of online engagement, including social interaction, information seeking, self-presentation, coordination, and emotional support. These rewards align agent objectives with empirically observed user motivations, enabling the study of how network structures and group formations emerge from individual decision-making. Our experiments show that coached LLM agents develop stable interaction patterns and form emergent social ties, yielding network structures that mirror properties of real online communities. By combining behavioral rewards with in-context adaptation, our framework establishes a principled testbed for investigating collective dynamics in LLM populations and reveals how artificial agents may approximate or diverge from human-like social behavior.

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LLM 社交动态 模拟框架 行为奖励 网络结构
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