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Main Authors: Lu, Ziqing, Liu, Guanlin, Lai, Lifeng, Xu, Weiyu
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.17405
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author Lu, Ziqing
Liu, Guanlin
Lai, Lifeng
Xu, Weiyu
author_facet Lu, Ziqing
Liu, Guanlin
Lai, Lifeng
Xu, Weiyu
contents The multi-agent reinforcement learning systems (MARL) based on the Markov decision process (MDP) have emerged in many critical applications. To improve the robustness/defense of MARL systems against adversarial attacks, the study of various adversarial attacks on reinforcement learning systems is very important. Previous works on adversarial attacks considered some possible features to attack in MDP, such as the action poisoning attacks, the reward poisoning attacks, and the state perception attacks. In this paper, we propose a brand-new form of attack called the camouflage attack in the MARL systems. In the camouflage attack, the attackers change the appearances of some objects without changing the actual objects themselves; and the camouflaged appearances may look the same to all the targeted recipient (victim) agents. The camouflaged appearances can mislead the recipient agents to misguided actions. We design algorithms that give the optimal camouflage attacks minimizing the rewards of recipient agents. Our numerical and theoretical results show that camouflage attacks can rival the more conventional, but likely more difficult state perception attacks. We also investigate cost-constrained camouflage attacks and showed numerically how cost budgets affect the attack performance.
format Preprint
id arxiv_https___arxiv_org_abs_2401_17405
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Camouflage Adversarial Attacks on Multiple Agent Systems
Lu, Ziqing
Liu, Guanlin
Lai, Lifeng
Xu, Weiyu
Multiagent Systems
The multi-agent reinforcement learning systems (MARL) based on the Markov decision process (MDP) have emerged in many critical applications. To improve the robustness/defense of MARL systems against adversarial attacks, the study of various adversarial attacks on reinforcement learning systems is very important. Previous works on adversarial attacks considered some possible features to attack in MDP, such as the action poisoning attacks, the reward poisoning attacks, and the state perception attacks. In this paper, we propose a brand-new form of attack called the camouflage attack in the MARL systems. In the camouflage attack, the attackers change the appearances of some objects without changing the actual objects themselves; and the camouflaged appearances may look the same to all the targeted recipient (victim) agents. The camouflaged appearances can mislead the recipient agents to misguided actions. We design algorithms that give the optimal camouflage attacks minimizing the rewards of recipient agents. Our numerical and theoretical results show that camouflage attacks can rival the more conventional, but likely more difficult state perception attacks. We also investigate cost-constrained camouflage attacks and showed numerically how cost budgets affect the attack performance.
title Camouflage Adversarial Attacks on Multiple Agent Systems
topic Multiagent Systems
url https://arxiv.org/abs/2401.17405