用学习器集成改进图像分类的解释

Aadil Ahamed, Kamran Alipour, Sateesh Kumar, Severine Soltani, M. Pazzani
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引用次数: 0

摘要

在深度学习的可解释人工智能(XAI)中,显著性图、热图或注意力图通常用于识别解释图像分类的重要区域。最近的研究表明,许多常见的XAI方法不能准确地识别人类专家认为重要的区域。我们建议从学习者集合中平均解释,以提高解释的准确性。我们的技术是通用的,可以用于多种深度学习架构和多种XAI算法。我们表明,这种方法减少了XAI算法与人类专家识别的感兴趣区域之间的差异。此外,我们表明,人类专家更喜欢由整体产生的解释而不是单个网络产生的解释。
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Improving Explanations of Image Classification with Ensembles of Learners
In explainable AI (XAI) for deep learning, saliency maps, heatmaps, or attention maps are commonly used to identify important regions for the classification of images of explanations. Recent research has shown that many common XAI methods do not accurately identify the regions that human experts consider important. We propose averaging explanations from ensembles of learners to increase the accuracy of explanations. Our technique is general and can be used with multiple deep learning architectures and multiple XAI algorithms. We show that this method decreases the difference between regions of interest of XAI algorithms and those identified by human experts. Furthermore, we show that human experts prefer the explanations produced by ensembles to those of individual networks.
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