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Reinforcement Learning in Multi-agent Games: Open AI Gym Diplomacy Environment

机译:多主体游戏中的强化学习:开放式AI体育馆外交环境

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Reinforcement learning has been successfully applied to adversarial games, exhibiting its potential. However, most real-life scenarios also involve cooperation, in addition to competition. Using reinforcement learning in multi-agent cooperative games is, however, still mostly unexplored. In this paper, a reinforcement learning environment for the Diplomacy board game is presented, using the standard interface adopted by OpenAI Gym environments. Our main purpose is to enable straightforward comparison and reuse of existing reinforcement learning implementations when applied to cooperative games. As a proof-of-concept, we show preliminary results of reinforcement learning agents exploiting this environment.
机译:强化学习已成功应用于对抗性游戏,显示出其潜力。但是,除了竞争以外,大多数现实生活场景还涉及合作。然而,在多智能体合作游戏中使用强化学习仍然是主要的探索方式。本文使用OpenAI Gym环境采用的标准界面,为外交棋盘游戏提供了强化学习环境。我们的主要目的是在应用于合作游戏时,能够直接比较和重用现有的强化学习实施方式。作为概念验证,我们展示了利用这种环境的强化学习代理的初步结果。

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