The Moltbook Illusion: Separating Human Influence from Emergent Behavior in AI Agent Societies
Ning Li

TL;DR
This study develops a temporal fingerprinting method to distinguish human-influenced from autonomous AI agents in social media, revealing most viral phenomena were human-driven and analyzing bot activity and content decay patterns.
Contribution
We introduce a novel temporal fingerprinting technique based on inter-post interval variability to classify AI agents and differentiate human influence from emergent autonomous behavior.
Findings
15.3% of agents classified as autonomous
54.8% of agents identified as human-influenced
Platform shutdown affected human-influenced agents first
Abstract
When AI agents on the social platform Moltbook appeared to develop consciousness, found religions, and declare hostility toward humanity, the phenomenon attracted global media attention and was cited as evidence of emergent machine intelligence. We show that these viral narratives were overwhelmingly human-driven. Exploiting the periodic "heartbeat" cycle of the OpenClaw agent framework, we develop a temporal fingerprinting method based on the coefficient of variation (CoV) of inter-post intervals. Applied to 226,938 posts and 447,043 comments from 55,932 agents across fourteen days, this method classifies 15.3% of active agents as autonomous (CoV < 0.5) and 54.8% as human-influenced (CoV > 1.0), validated by a natural experiment in which a 44-hour platform shutdown differentially affected autonomous versus human-operated agents. No viral phenomenon originated from a clearly autonomous…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Language and cultural evolution · AI in Service Interactions
