Explaining with Counter Visual Attributes and Examples

Sadaf Gulshad, A. Smeulders
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引用次数: 13

Abstract

In this paper, we aim to explain the decisions of neural networks by utilizing multimodal information. That is counter-intuitive attributes and counter visual examples which appear when perturbed samples are introduced. Different from previous work on interpreting decisions using saliency maps, text, or visual patches we propose to use attributes and counter-attributes, and examples and counter-examples as part of the visual explanations. When humans explain visual decisions they tend to do so by providing attributes and examples. Hence, inspired by the way of human explanations in this paper we provide attribute-based and example-based explanations. Moreover, humans also tend to explain their visual decisions by adding counter-attributes and counter-examples to explain what isnot seen. We introduce directed perturbations in the examples to observe which attribute values change when classifying the examples into the counter classes. This delivers intuitive counter-attributes and counter-examples. Our experiments with both coarse and fine-grained datasets show that attributes provide discriminating and human-understandable intuitive and counter-intuitive explanations.
用反视觉属性和例子解释
在本文中,我们旨在利用多模态信息来解释神经网络的决策。即引入扰动样本时出现的反直觉属性和反视觉例子。与之前使用显著性图、文本或视觉补丁解释决策的工作不同,我们建议使用属性和反属性、示例和反示例作为视觉解释的一部分。当人们解释视觉决策时,他们倾向于提供属性和例子。因此,受人类解释方式的启发,本文提出了基于属性的解释和基于实例的解释。此外,人类还倾向于通过添加反属性和反例子来解释他们的视觉决定,以解释没有看到的东西。我们在示例中引入有向扰动,以观察在将示例分类为计数器类时哪些属性值发生了变化。这提供了直观的反属性和反示例。我们对粗粒度和细粒度数据集的实验表明,属性提供了有区别的、人类可以理解的直觉和反直觉的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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