What do You Mean? Interpreting Image Classification with Crowdsourced Concept Extraction and Analysis

Agathe Balayn, Panagiotis Soilis, C. Lofi, Jie Yang, A. Bozzon
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引用次数: 21

Abstract

Global interpretability is a vital requirement for image classification applications. Existing interpretability methods mainly explain a model behavior by identifying salient image patches, which require manual efforts from users to make sense of, and also do not typically support model validation with questions that investigate multiple visual concepts. In this paper, we introduce a scalable human-in-the-loop approach for global interpretability. Salient image areas identified by local interpretability methods are annotated with semantic concepts, which are then aggregated into a tabular representation of images to facilitate automatic statistical analysis of model behavior. We show that this approach answers interpretability needs for both model validation and exploration, and provides semantically more diverse, informative, and relevant explanations while still allowing for scalable and cost-efficient execution.
你是什么意思?基于众包概念提取与分析的图像分类解释
全局可解释性是图像分类应用的重要要求。现有的可解释性方法主要通过识别显著图像补丁来解释模型行为,这些补丁需要用户手工操作才能理解,并且通常不支持用调查多个视觉概念的问题来验证模型。在本文中,我们引入了一种可扩展的人在环方法来实现全局可解释性。通过局部可解释性方法识别的显著图像区域用语义概念进行注释,然后将其聚合成图像的表格表示,以方便模型行为的自动统计分析。我们表明,这种方法满足了模型验证和探索的可解释性需求,并提供了语义上更多样化、信息量更大、更相关的解释,同时仍然允许可扩展和经济高效的执行。
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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