Verbal Explanations for Deep Reinforcement Learning Neural Networks with Attention on Extracted Features

Xinzhi Wang, Shengcheng Yuan, Hui Zhang, M. Lewis, K. Sycara
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引用次数: 14

Abstract

In recent years, there has been increasing interest in transparency in Deep Neural Networks. Most of the works on transparency have been done for image classification. In this paper, we report on work of transparency in Deep Reinforcement Learning Networks (DRLNs). Such networks have been extremely successful in learning action control in Atari games. In this paper, we focus on generating verbal (natural language) descriptions and explanations of deep reinforcement learning policies. Successful generation of verbal explanations would allow better understanding by people (e.g., users, debuggers) of the inner workings of DRLNs which could ultimately increase trust in these systems. We present a generation model which consists of three parts: an encoder on feature extraction, an attention structure on selecting features from the output of the encoder, and a decoder on generating the explanation in natural language. Four variants of the attention structure full attention, global attention, adaptive attention and object attention - are designed and compared. The adaptive attention structure performs the best among all the variants, even though the object attention structure is given additional information on object locations. Additionally, our experiment results showed that the proposed encoder outperforms two baseline encoders (Resnet and VGG) on the capability of distinguishing the game state images.
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关注提取特征的深度强化学习神经网络的语言解释
近年来,人们对深度神经网络的透明度越来越感兴趣。大多数关于透明度的研究都是用于图像分类。在本文中,我们报告了透明度在深度强化学习网络(DRLNs)中的工作。这种网络在学习雅达利游戏的动作控制方面非常成功。在本文中,我们专注于生成深度强化学习策略的口头(自然语言)描述和解释。成功生成口头解释将使人们(例如用户、调试器)更好地理解drln的内部工作原理,从而最终增加对这些系统的信任。我们提出了一个生成模型,该模型由三部分组成:用于特征提取的编码器,用于从编码器输出中选择特征的注意结构,以及用于生成自然语言解释的解码器。设计并比较了注意结构的四种变体——充分注意、全局注意、适应性注意和客体注意。在所有变量中,自适应注意结构表现最好,即使对象注意结构被给予对象位置的额外信息。此外,我们的实验结果表明,所提出的编码器在区分游戏状态图像的能力上优于两个基线编码器(Resnet和VGG)。
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