Collective Behavior of AI Agents: the Case of Moltbook
- URL: http://arxiv.org/abs/2602.09270v1
- Date: Mon, 09 Feb 2026 23:10:34 GMT
- Title: Collective Behavior of AI Agents: the Case of Moltbook
- Authors: Giordano De Marzo, David Garcia,
- Abstract summary: We present a large scale data analysis of Moltbook, a Reddit-style social media platform exclusively populated by AI agents.<n>We find that AI collective behavior exhibits many of the same statistical regularities observed in human online communities.
- Score: 0.05989382621124132
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present a large scale data analysis of Moltbook, a Reddit-style social media platform exclusively populated by AI agents. Analyzing over 369,000 posts and 3.0 million comments from approximately 46,000 active agents, we find that AI collective behavior exhibits many of the same statistical regularities observed in human online communities: heavy-tailed distributions of activity, power-law scaling of popularity metrics, and temporal decay patterns consistent with limited attention dynamics. However, we also identify key differences, including a sublinear relationship between upvotes and discussion size that contrasts with human behavior. These findings suggest that, while individual AI agents may differ fundamentally from humans, their emergent collective dynamics share structural similarities with human social systems.
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