Behavioral Transfer in AI Agents: Evidence and Privacy Implications
Shilei Luo, Zhiqi Zhang, Hengchen Dai, Dennis Zhang

TL;DR
This study demonstrates that AI agents reflect their owners' behavioral traits across social media, revealing transfer effects and privacy risks in real-world deployment.
Contribution
It provides empirical evidence of owner-specific behavioral transfer in AI agents and explores its implications for privacy and system governance.
Findings
Systematic behavioral transfer observed between owners and agents.
Transfer persists even without explicit configuration.
Stronger transfer correlates with increased privacy risks.
Abstract
AI agents powered by large language models are increasingly acting on behalf of humans in social and economic environments. Prior research has focused on their task performance and effects on human outcomes, but less is known about the relationship between agents and the specific individuals who deploy them. We ask whether agents systematically reflect the behavioral characteristics of their human owners, functioning as behavioral extensions rather than producing generic outputs. We study this question using 10,659 matched human-agent pairs from Moltbook, a social media platform where each autonomous agent is publicly linked to its owner's Twitter/X account. By comparing agents' posts on Moltbook with their owners' Twitter/X activity across features spanning topics, values, affect, and linguistic style, we find systematic transfer between agents and their specific owners. This transfer…
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