Single-Agent Poisoning Attacks Suffice to Ruin Multi-Agent Learning

Aug 1, 2025·
Fan Yao
Fan Yao
,
Yuwei Cheng
,
Ermin Wei
,
Haifeng Xu
· 0 min read
Abstract
We investigate the robustness of multi-agent learning in strongly monotone games with bandit feedback. While previous research has developed learning algorithms that achieve last-iterate convergence to the unique Nash equilibrium (NE) at a polynomial rate, we demonstrate that all such algorithms are vulnerable to adversaries capable of poisoning even a single agent’s utility observations. Specifically, we propose an attacking strategy such that for any given time horizon T, the adversary can mislead any multi-agent learning algorithm to converge to a point other than the unique NE with a corruption budget that grows sublinearly in T. To further understand the inherent robustness of these algorithms, we characterize the fundamental trade-off between convergence speed and the maximum tolerable total utility corruptions for two example algorithms, including the state-of-the-art one. Our theoretical and empirical results reveal an intrinsic efficiency-robustness trade-off: the faster an algorithm converges, the more vulnerable it becomes to utility poisoning attacks. To the best of our knowledge, this is the first work to identify and characterize such a trade-off in the context of multi-agent learning.
Type
Publication
ICLR, 2025
publications
Fan Yao
Authors
Assistant Professor

I am an assistant professor in the Department of Statistics and Operations Research (STOR) at UNC Chapel Hill. I received my PhD in Computer Science from the University of Virginia, advised by Haifeng Xu and Hongning Wang. Prior to obtaining my PhD, I spent two years at the University of Chicago and received both my BS and MS in Computational Mathematics from Peking University. My CV is available here.

My research interests include social and ethical aspects of AI, human-centered machine learning, strategic and multi-agent systems, recommender systems and digital platform economy. If you share similar interests, feel free to contact me via email. Prospective students are encouraged to review this before contacting me.

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Current status: ☕️ In Chapel Hill (☕️regular ✈️traveling 🏖vacation ⏳deadline mode)