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Main Authors: Agrawal, Kushal, Teo, Verona, Vazquez, Juan J., Kunnavakkam, Sudarsh, Srikanth, Vishak, Liu, Andy
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.01413
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author Agrawal, Kushal
Teo, Verona
Vazquez, Juan J.
Kunnavakkam, Sudarsh
Srikanth, Vishak
Liu, Andy
author_facet Agrawal, Kushal
Teo, Verona
Vazquez, Juan J.
Kunnavakkam, Sudarsh
Srikanth, Vishak
Liu, Andy
contents Large language models (LLMs) have demonstrated impressive capabilities as autonomous agents with rapidly expanding applications in various domains. As these agents increasingly engage in socioeconomic interactions, identifying their potential for undesirable behavior becomes essential. In this work, we examine scenarios where they can choose to collude, defined as secretive cooperation that harms another party. To systematically study this, we investigate the behavior of LLM agents acting as sellers in simulated continuous double auction markets. Through a series of controlled experiments, we analyze how parameters such as the ability to communicate, choice of model, and presence of environmental pressures affect the stability and emergence of seller collusion. We find that direct seller communication increases collusive tendencies, the propensity to collude varies across models, and environmental pressures, such as oversight and urgency from authority figures, influence collusive behavior. Our findings highlight important economic and ethical considerations for the deployment of LLM-based market agents.
format Preprint
id arxiv_https___arxiv_org_abs_2507_01413
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Evaluating LLM Agent Collusion in Double Auctions
Agrawal, Kushal
Teo, Verona
Vazquez, Juan J.
Kunnavakkam, Sudarsh
Srikanth, Vishak
Liu, Andy
Computer Science and Game Theory
Artificial Intelligence
Machine Learning
Large language models (LLMs) have demonstrated impressive capabilities as autonomous agents with rapidly expanding applications in various domains. As these agents increasingly engage in socioeconomic interactions, identifying their potential for undesirable behavior becomes essential. In this work, we examine scenarios where they can choose to collude, defined as secretive cooperation that harms another party. To systematically study this, we investigate the behavior of LLM agents acting as sellers in simulated continuous double auction markets. Through a series of controlled experiments, we analyze how parameters such as the ability to communicate, choice of model, and presence of environmental pressures affect the stability and emergence of seller collusion. We find that direct seller communication increases collusive tendencies, the propensity to collude varies across models, and environmental pressures, such as oversight and urgency from authority figures, influence collusive behavior. Our findings highlight important economic and ethical considerations for the deployment of LLM-based market agents.
title Evaluating LLM Agent Collusion in Double Auctions
topic Computer Science and Game Theory
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2507.01413