通过生成反事实图像来理解错误分类的原因

Muneaki Suzuki, Yoshitaka Kameya, Takuro Kutsuna, N. Mitsumoto
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引用次数: 7

摘要

可解释的人工智能(XAI)方法有助于理解深度神经网络(dnn)的行为,最近引起了人们的兴趣。例如,在图像分类任务中,属性映射已用于指示输入图像中对输出决策很重要的像素。然而,通常情况下,仅从单个归因图很难理解错误分类的原因。在本文中,为了增强与误分类原因相关的信息,我们提出使用生成对抗网络(gan)生成几个反事实图像。我们的经验表明,这些反事实图像及其归因图提高了误分类图像的可解释性。此外,我们还建议通过逐渐改变GAN的配置来生成过渡图像,以便清楚地了解错误分类图像的哪一部分导致了错误分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding the Reason for Misclassification by Generating Counterfactual Images
Explainable AI (XAI) methods contribute to understanding the behavior of deep neural networks (DNNs), and have attracted interest recently. For example, in image classification tasks, attribution maps have been used to indicate the pixels of an input image that are important to the output decision. Oftentimes, however, it is difficult to understand the reason for misclassification only from a single attribution map. In this paper, in order to enhance the information related to the reason for misclassification, we propose to generate several counterfactual images using generative adversarial networks (GANs). We empirically show that these counterfactual images and their attribution maps improve the interpretability of misclassified images. Furthermore, we additionally propose to generate transitional images by gradually changing the configurations of a GAN in order to understand clearly which part of the misclassified image cause the misclassification.
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