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Visual Transfer Between Atari Games Using Competitive Reinforcement Learning

机译:使用竞争力的加固学习atari游戏之间的视觉转移

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Modern deep Reinforcement Learning (RL) methods are highly effective at selecting optimal policies to maximize rewards. The combination of these methods with Deep Learning approaches shows promise for challenging tasks by leveraging rich visual information for policy selection. In this paper, we explore the use of visual representations to transfer the knowledge of an RL agent from one domain to another. More specifically, we propose a method that can generalize for a target game using an RL agent trained for a source game in Atari 2600 environment. Instead of fine-tuning a pre-trained model for the target game, we propose a learning approach to update the model using multiple RL agents trained in parallel with different representations of the target game. The visual representations of the target game are generated by learning a visual mapping between the source game and the target game in an unsupervised manner. The visual mapping between sequences of transfer pairs has been shown to derive new representations of the target game; training on which improves the RL agent updates in terms of performance, data efficiency and stability. In order to demonstrate the effectiveness of this approach, the transfer learning procedure is evaluated on two pairs of Atari games taken in contrasting settings.
机译:现代化的深度加强学习(RL)方法在选择最佳奖励方面非常有效。这些方法的组合具有深入学习方法,可以通过利用丰富的视觉信息进行富裕的政策选择来呈现挑战任务的承诺。在本文中,我们探讨了使用视觉表示将RL代理从一个域转移到另一个域的知识。更具体地,我们提出了一种方法,该方法可以使用在ATARI 2600环境中用于源游戏的RL代理来概括目标游戏。而不是微调目标游戏的预先调整模型,我们提出了一种学习方法,可以使用与目标游戏的不同表示的不同RL代理进行培训的多个RL代理更新模型。通过以无监督方式学习源游戏和目标游戏之间的视觉映射来生成目标游戏的视觉表示。已经显示了转印对序列之间的视觉映射,从而导出目标游戏的新表示;在性能,数据效率和稳定性方面提高了RL代理更新的培训。为了证明这种方法的有效性,在对比度设置的两对Atari游戏中评估转移学习程序。

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