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Adversarial attacks in consensus-based multi-agent reinforcement learning

机译:基于共识的多智能经纪增强学习的对抗攻击

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Recently, many cooperative distributed multiagent reinforcement learning (MARL) algorithms have been proposed in the literature. In this work, we study the effect of adversarial attacks on a network that employs a consensus-based MARL algorithm. We show that an adversarial agent can persuade all the other agents in the network to implement policies that optimize an objective that it desires. In this sense, the standard consensus-based MARL algorithms are fragile to attacks.
机译:最近,在文献中提出了许多合作分布式多验强度学习(MARL)算法。 在这项工作中,我们研究对普遍攻击对采用基于共识的MARL算法的网络的影响。 我们表明,对抗性代理人可以说服网络中的所有其他代理商实施优化它欲望的目标的政策。 从这个意义上讲,基于标准的基于标准的Marl算法脆弱地攻击。

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