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Reinforcement Learning of Coordination in Cooperative Multi-agent Systems

机译:协同多智能经济型系统协调的加固学习

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We report on an investigation of reinforcement learning techniques for the learning of coordination in cooperative multi-agent systems. Specifically, we focus on a novel action selection strategy for Q-learning (Watkins 1989). The new technique is applicable to scenarios where mutual observation of actions is not possible. To date, reinforcement learning approaches for such independent agents did not guarantee convergence to the optimal joint action in scenarios with high miscoordination costs. We improve on previous results (Claus & Boutilier 1998) by demonstrating empirically that our extension causes the agents to converge almost always to the optimal joint action even in these difficult cases.
机译:我们报告了合作多助理系统协调学习的强化学习技术调查。具体而言,我们专注于Q-Learning的新动作选择策略(Watkins 1989)。新技术适用于不可能对行动的相互观察的情景。迄今为止,这种独立代理商的加固学习方法并未保证对误设方成本的方案中的最佳联合行动趋同。我们通过经验展示我们的延期使代理商几乎总是在这些困难的情况下汇集到最佳的联合行动,即使在这些困难的情况下也会改进以前的结果。

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