cs.AI updates on arXiv.org 09月23日
多智能体系统中单个智能体对抗样本生成研究
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本文探讨了在多智能体系统中,若攻击者仅了解单个智能体,是否仍能生成误导集体决策的对抗样本。通过构建不完全信息博弈模型,提出M-Spoiler框架,模拟智能体交互并生成对抗样本,验证了单个智能体对系统的风险及框架的有效性。

arXiv:2509.16494v1 Announce Type: cross Abstract: Individual Large Language Models (LLMs) have demonstrated significant capabilities across various domains, such as healthcare and law. Recent studies also show that coordinated multi-agent systems exhibit enhanced decision-making and reasoning abilities through collaboration. However, due to the vulnerabilities of individual LLMs and the difficulty of accessing all agents in a multi-agent system, a key question arises: If attackers only know one agent, could they still generate adversarial samples capable of misleading the collective decision? To explore this question, we formulate it as a game with incomplete information, where attackers know only one target agent and lack knowledge of the other agents in the system. With this formulation, we propose M-Spoiler, a framework that simulates agent interactions within a multi-agent system to generate adversarial samples. These samples are then used to manipulate the target agent in the target system, misleading the system's collaborative decision-making process. More specifically, M-Spoiler introduces a stubborn agent that actively aids in optimizing adversarial samples by simulating potential stubborn responses from agents in the target system. This enhances the effectiveness of the generated adversarial samples in misleading the system. Through extensive experiments across various tasks, our findings confirm the risks posed by the knowledge of an individual agent in multi-agent systems and demonstrate the effectiveness of our framework. We also explore several defense mechanisms, showing that our proposed attack framework remains more potent than baselines, underscoring the need for further research into defensive strategies.

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多智能体系统 对抗样本 智能体交互 M-Spoiler框架 集体决策
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