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A Singular Value Perspective on Model Robustness

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arxiv 2012.03516 v1 pith:H6S3WQG5 submitted 2020-12-07 cs.CV

A Singular Value Perspective on Model Robustness

classification cs.CV
keywords cnnsbehaviorbiasesfeaturesgeneralizationnetworksranksingular
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Convolutional Neural Networks (CNNs) have made significant progress on several computer vision benchmarks, but are fraught with numerous non-human biases such as vulnerability to adversarial samples. Their lack of explainability makes identification and rectification of these biases difficult, and understanding their generalization behavior remains an open problem. In this work we explore the relationship between the generalization behavior of CNNs and the Singular Value Decomposition (SVD) of images. We show that naturally trained and adversarially robust CNNs exploit highly different features for the same dataset. We demonstrate that these features can be disentangled by SVD for ImageNet and CIFAR-10 trained networks. Finally, we propose Rank Integrated Gradients (RIG), the first rank-based feature attribution method to understand the dependence of CNNs on image rank.

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