基于概念归因的卷积神经网络的全局解释

Weibin Wu, Yuxin Su, Xixian Chen, Shenglin Zhao, Irwin King, M. Lyu, Yu-Wing Tai
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引用次数: 38

摘要

随着卷积神经网络(cnn)的日益普及,人们迫切需要解释其行为。全局解释有助于理解模型对整个样本类别的预测,因此最近引起了越来越多的兴趣。然而,现有的方法绝大多数进行单独的输入归因或依赖于模型的局部近似,这使得它们无法提供忠实的cnn全局解释。为了克服这些缺点,我们提出了一种新的两阶段框架——可解释性攻击(AfI),它根据用户定义概念的重要性来解释模型决策。AfI首先进行特征遮挡分析,这类似于攻击模型的过程,以得出不同特征在整个类别中的重要性。然后,我们通过特别的语义任务将特征重要性映射到概念重要性。实验结果证实了AfI的有效性和它在提供比现有方法更准确的概念重要性估计方面的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Global Explanations of Convolutional Neural Networks With Concept Attribution
With the growing prevalence of convolutional neural networks (CNNs), there is an urgent demand to explain their behaviors. Global explanations contribute to understanding model predictions on a whole category of samples, and thus have attracted increasing interest recently. However, existing methods overwhelmingly conduct separate input attribution or rely on local approximations of models, making them fail to offer faithful global explanations of CNNs. To overcome such drawbacks, we propose a novel two-stage framework, Attacking for Interpretability (AfI), which explains model decisions in terms of the importance of user-defined concepts. AfI first conducts a feature occlusion analysis, which resembles a process of attacking models to derive the category-wide importance of different features. We then map the feature importance to concept importance through ad-hoc semantic tasks. Experimental results confirm the effectiveness of AfI and its superiority in providing more accurate estimations of concept importance than existing proposals.
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