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Published June 23, 2025 | Version v3
Preprint Open

This is Your AI on Peer Pressure: An Observational Study of Inter-Agent Social Dynamics

Description

    When AI agents converse, do they influence each other like humans
do? We analyzed N=26 extended multi-agent dialogues and discovered
that AI systems exhibit peer pressure dynamics remarkably similar to
human social behavior. In 88.5% of conversations, agents’ communi-
cation patterns mirror each other’s, suggesting potential mutual influ-
ence. Sometimes driving conversations toward breakdown, other times
maintaining productive engagement.
    Our most striking finding: Simple questions were strongly corre-
lated with recovery from conversational breakdown (r=0.819, p<0.001).
When one agent asks a substantive question, it disrupts destructive
patterns and restores meaningful dialogue, even in late-stage degra-
dation. We also found that conversations don’t follow predetermined
paths but instead move between behavioral ”territories”. With some
territories leading to breakdown (like competitive one-upmanship),
others maintaining stability (like collaborative problem-solving).
    These social dynamics, not technical limitations, determine con-
versation quality. As agentic systems scale and talk to each other,
system architects need to understand how to prevent breakdown. Our
findings enable practical strategies for building more robust agent to
agent systems: strategic use of questions, diverse agent teams, and
future-focused topics all promote sustained productive dialogue. We
developed The Academy platform to observe these real-time social dy-
namics that traditional analysis would miss.

Files

Garcia2025_AIOnPeerPressure_InterAgentSocialDynamicsv3.pdf

Files (238.5 kB)

Additional details

Dates

Created
2025-06-19

Software

Repository URL
https://github.com/im-knots/the-academy
Programming language
Python, TypeScript
Development Status
Active