基于介质和软介质聚合的弹性多智能体强化学习

C. Bhowmick, Mudassir Shabbir, W. Abbas, X. Koutsoukos
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引用次数: 0

摘要

与非合作的智能体相比,通过共享信息相互合作的强化学习(RL)智能体网络可以提高控制和协调任务的学习性能。然而,网络多智能体强化学习(MARL)容易受到敌对智能体的攻击,这些敌对智能体可能会破坏某些智能体并向网络发送恶意信息。在本文中,我们考虑了在存在旨在破坏学习算法的对抗性代理的情况下的弹性MARL问题。首先,提出了一种攻击模型,通过修改被攻击主体共享的参数来降低目标主体的性能。为了提高弹性,本文提出了基于介质和软介质的聚合方法。我们的分析表明,基于介质的MARL算法收敛于给定标准假设的最优解,并提高了整体学习性能和鲁棒性。仿真结果表明,与基于平均和中值的聚合方法相比,该聚合方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resilient Multi-agent Reinforcement Learning Using Medoid and Soft-medoid Based Aggregation
A network of reinforcement learning (RL) agents that cooperate with each other by sharing information can improve learning performance of control and coordination tasks when compared to non-cooperative agents. However, networked Multi-agent Reinforcement Learning (MARL) is vulnerable to adversarial agents that can compromise some agents and send malicious information to the network. In this paper, we consider the problem of resilient MARL in the presence of adversarial agents that aim to compromise the learning algorithm. First, the paper presents an attack model which aims to degrade the performance of a target agent by modifying the parameters shared by an attacked agent. In order to improve the resilience, the paper presents aggregation methods using medoid and soft-medoid. Our analysis shows that the medoid-based MARL algorithms converge to an optimal solution given standard assumptions, and improve the overall learning performance and robustness. Simulation results show the effectiveness of the aggregation methods compared with average and median-based aggregation.
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