Towards Explainable Image Classifier: An Analogy to Multiple Choice Question Using Patch-level Similarity Measure

Yian Seo, K. Shin
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Abstract

With increased interests in Explainable Artificial Intelligence (XAI), many researches find ways to provide explanations for machine learning algorithms and their predictions. We propose Multiple Choice Questioned Convolutional Neural Network (MCQ-CNN) to better understand the prediction of image classifier by considering the problem of multi-class classification as the problem of multiple choice question. MCQ-CNN not only performs classification of the query image, but also explains the classification result by demonstrating the elimination process of multi-class labels in patch-level. The proposed model consists of two modules. Classification module is to classify class label of the query. Elimination module is to perform similarity measure in patch-level to distinguish whether the target object part shares the feature of certain class label or not. Classification module is trained using ResNet with high classification accuracy. Elimination module performs similarity measure by distance metric learning based on Large Margin Nearest Neighbor (LMNN). Our experiments have shown notable performances in both classification and elimination modules.
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迈向可解释的图像分类器:用补丁级相似性度量类比选择题
随着人们对可解释人工智能(XAI)的兴趣日益浓厚,许多研究都在寻找方法来解释机器学习算法及其预测。为了更好地理解图像分类器的预测,我们提出了多项选择问题卷积神经网络(Multiple Choice questions Convolutional Neural Network, MCQ-CNN),将多类分类问题视为多项选择问题。MCQ-CNN不仅对查询图像进行分类,还通过在patch级展示多类标签的消除过程来解释分类结果。该模型由两个模块组成。分类模块是对查询的类标号进行分类。消去模块是在贴片级进行相似性度量,以区分目标对象部件是否具有某类标签的特征。分类模块使用ResNet进行训练,分类精度高。消去模块通过基于大边界最近邻(LMNN)的距离度量学习进行相似性度量。我们的实验在分类和消去模块上都显示了显著的性能。
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