Curriculum-Driven Multi-Agent Learning and the Role of Implicit Communication in Teamwork

06/21/2021
by   Niko A. Grupen, et al.
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We propose a curriculum-driven learning strategy for solving difficult multi-agent coordination tasks. Our method is inspired by a study of animal communication, which shows that two straightforward design features (mutual reward and decentralization) support a vast spectrum of communication protocols in nature. We highlight the importance of similarly interpreting emergent communication as a spectrum. We introduce a toroidal, continuous-space pursuit-evasion environment and show that naive decentralized learning does not perform well. We then propose a novel curriculum-driven strategy for multi-agent learning. Experiments with pursuit-evasion show that our approach enables decentralized pursuers to learn to coordinate and capture a superior evader, significantly outperforming sophisticated analytical policies. We argue through additional quantitative analysis – including influence-based measures such as Instantaneous Coordination – that emergent implicit communication plays a large role in enabling superior levels of coordination.

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