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Learning Strategic Group Formation for Coordinated Behavior in Adversarial Multi-Agent with Double DQN

机译:学习具有双重DQN的对抗式多代理商协调行为的战略团队形成

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We examine whether a team of agents can learn geometric and strategic group formations by using deep reinforcement learning in adversarial multi-agent systems. This is a significant point underlying the control and coordination of multiple autonomous and intelligent agents. While there are many possible approaches to solve this problem, we are interested in fully end-to-end learning method where agents do not have any prior knowledge of the environment and its dynamics. In this paper, we propose a scalable and distributed double DQN framework to train adversarial multi-agent systems. We show that a large number of agents can learn to cooperatively move, attack and defend themselves in various geometric formations and battle tactics like encirclement, guerrilla warfare, frontal attack, flanking maneuver, and so on. We finally show that agents create an emergent and collective flocking behaviors by using local views from the environment only.
机译:我们研究了一个特工团队是否可以通过在对抗性多特工系统中使用深度强化学习来学习几何和战略性小组编队。这是控制和协调多个自治和智能代理的基础。尽管有许多可能的方法可以解决此问题,但我们对完全端到端的学习方法感兴趣,在这种方法中,代理对环境及其动力学没有任何先验知识。在本文中,我们提出了一种可扩展的分布式双DQN框架来训练对抗性多主体系统。我们表明,许多特工可以学会以各种几何形式和战斗策略(如包围,游击战,正面攻击,侧翼机动等)协同行动,攻击和捍卫自己。最后,我们证明了代理仅通过使用环境中的本地视图来创建突发的和集体的植群行为。

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