代理能自发形成社会吗?引入新的多代理生成架构以激发社会涌现

H. Zhang, J. Yin, M. Jiang, C. Su
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引用次数: 0

摘要

生成式代理已在特定任务中展现出令人印象深刻的能力,但这些框架大多专注于独立任务,缺乏对社会互动的关注。我们介绍了一种称为 ITCMA-S 的生成式代理架构,它包括一个用于单个代理的基本框架和一个称为 LTRHA 的框架,后者支持多代理之间的社会互动。这种架构使代理能够识别并过滤掉不利于社会互动的行为,引导它们选择更有利的行为。我们设计了一个沙盒环境,模拟多个无身份代理之间社会关系的自然演化,以进行实验评估。结果表明,ITCMA-S 在多个评价指标上表现良好,证明了它能够主动探索环境、识别新的代理,并通过连续的行动和对话获取新信息。观察结果表明,当代理彼此建立联系时,他们会自发地围绕选定的领导者形成具有内部等级制度的小团体,并组织集体活动。
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Can Agents Spontaneously Form a Society? Introducing a Novel Architecture for Generative Multi-Agents to Elicit Social Emergence
Generative agents have demonstrated impressive capabilities in specific tasks, but most of these frameworks focus on independent tasks and lack attention to social interactions. We introduce a generative agent architecture called ITCMA-S, which includes a basic framework for individual agents and a framework called LTRHA that supports social interactions among multi-agents. This architecture enables agents to identify and filter out behaviors that are detrimental to social interactions, guiding them to choose more favorable actions. We designed a sandbox environment to simulate the natural evolution of social relationships among multiple identity-less agents for experimental evaluation. The results showed that ITCMA-S performed well on multiple evaluation indicators, demonstrating its ability to actively explore the environment, recognize new agents, and acquire new information through continuous actions and dialogue. Observations show that as agents establish connections with each other, they spontaneously form cliques with internal hierarchies around a selected leader and organize collective activities.
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