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Visualization of Deep Reinforcement Learning using Grad-CAM: How AI Plays Atari Games?

机译:使用Grad-CAM进行深度强化学习的可视化:AI如何玩Atari游戏?

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Deep Reinforcement Learning (DRL) allows agents to learn strategies to solve complex tasks. It has been applied to solve various problems such as natural language processing, games, etc. However, it is still difficult to apply DRL to certain real-world problems because each action is not predictable, and we cannot know why the results are coming out. For this reason, a technology called eXplainable Artificial Intelligence (XAI) has been recently developed. As this technology shows a visualization of the AI process, people can easily understand the results of AI. In this paper, we proposed to use Grad-CAM, one of the XAI techniques, when we visualize the behaviors of AI players trained by DRL. Our experimental results show which part of the input state is focused on when one well-trained agent takes action.
机译:深度强化学习(DRL)使代理能够学习解决复杂任务的策略。它已被用来解决各种问题,例如自然语言处理,游戏等。但是,由于每个动作都是不可预测的,因此仍然难以将DRL应用于某些实际问题,而且我们不知道为什么会得出结果。因此,最近开发了一种称为可扩展人工智能(XAI)的技术。由于该技术显示了AI过程的可视化,因此人们可以轻松理解AI的结果。在本文中,当我们可视化受DRL训练的AI玩家的行为时,我们建议使用Grad-CAM(一种XAI技术)。我们的实验结果表明,当一种训练有素的代理采取行动时,输入状态的哪一部分集中在该状态上。

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