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Coordinated Multi-Agent Imitation Learning

机译:协同多智能体模仿学习

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We study the problem of imitation learning from demonstrations of multiple coordinating agents. One key challenge in this setting is that learning a good model of coordination can be difficult, since coordination is often implicit in the demonstrations and must be inferred as a latent variable. We propose a joint approach that simultaneously learns a latent coordination model along with the individual policies. In particular, our method integrates unsupervised structure learning with conventional imitation learning. We illustrate the power of our approach on a difficult problem of learning multiple policies for fine-grained behavior modeling in team sports, where different players occupy different roles in the coordinated team strategy. We show that having a coordination model to infer the roles of players yields substantially improved imitation loss compared to conventional baselines.
机译:我们从多个协调代理的演示中研究模仿学习的问题。在这种情况下的一个主要挑战是,学习良好的协调模型可能很困难,因为在演示中协调通常是隐含的,必须将其推断为潜在变量。我们提出了一种联合方法,该方法可以同时学习潜在的协调模型以及各个政策。特别是,我们的方法将无监督的结构学习与常规的模仿学习相结合。我们说明了我们的方法在学习多个策略以进行团队运动中细粒度行为建模的难题上的力量,在该策略中,不同的参与者在协调的团队策略中扮演着不同的角色。我们显示,与传统基准相比,拥有一个协调模型来推断玩家的角色可以大大改善模仿损失。

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