Evolving Collective Cognition in Human-Agent Hybrid Societies: How Agents Form Stances and Boundaries
- URL: http://arxiv.org/abs/2508.17366v1
- Date: Sun, 24 Aug 2025 13:50:18 GMT
- Title: Evolving Collective Cognition in Human-Agent Hybrid Societies: How Agents Form Stances and Boundaries
- Authors: Hanzhong Zhang, Muhua Huang, Jindong Wang,
- Abstract summary: We investigate how group stance differentiation and social boundary formation emerge in human-agent hybrid societies.<n>We find that agents exhibit endogenous stances, independent of their preset identities.<n>Our findings suggest that preset identities do not rigidly determine the agents' social structures.
- Score: 12.68373270583966
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Large language models have been widely used to simulate credible human social behaviors. However, it remains unclear whether these models can demonstrate stable capacities for stance formation and identity negotiation in complex interactions, as well as how they respond to human interventions. We propose a computational multi-agent society experiment framework that integrates generative agent-based modeling with virtual ethnographic methods to investigate how group stance differentiation and social boundary formation emerge in human-agent hybrid societies. Across three studies, we find that agents exhibit endogenous stances, independent of their preset identities, and display distinct tonal preferences and response patterns to different discourse strategies. Furthermore, through language interaction, agents actively dismantle existing identity-based power structures and reconstruct self-organized community boundaries based on these stances. Our findings suggest that preset identities do not rigidly determine the agents' social structures. For human researchers to effectively intervene in collective cognition, attention must be paid to the endogenous mechanisms and interactional dynamics within the agents' language networks. These insights provide a theoretical foundation for using generative AI in modeling group social dynamics and studying human-agent collaboration.
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