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Perturbation diversity certificates robust generalization.

Authors :
Qian, Zhuang
Zhang, Shufei
Huang, Kaizhu
Wang, Qiufeng
Yi, Xinping
Gu, Bin
Xiong, Huan
Source :
Neural Networks. Apr2024, Vol. 172, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

Whilst adversarial training has been proven to be one most effective defending method against adversarial attacks for deep neural networks, it suffers from over-fitting on training adversarial data and thus may not guarantee the robust generalization. This may result from the fact that the conventional adversarial training methods generate adversarial perturbations usually in a supervised way so that the resulting adversarial examples are highly biased towards the decision boundary, leading to an inhomogeneous data distribution. To mitigate this limitation, we propose to generate adversarial examples from a perturbation diversity perspective. Specifically, the generated perturbed samples are not only adversarial but also diverse so as to certify robust generalization and significant robustness improvement through a homogeneous data distribution. We provide theoretical and empirical analysis, establishing a foundation to support the proposed method. As a major contribution, we prove that promoting perturbations diversity can lead to a better robust generalization bound. To verify our methods' effectiveness, we conduct extensive experiments over different datasets (e.g., CIFAR-10, CIFAR-100, SVHN) with different adversarial attacks (e.g., PGD, CW). Experimental results show that our method outperforms other state-of-the-art (e.g., PGD and Feature Scattering) in robust generalization performance. • Improved adversarial robustness from a diversity perspective. • Showed that robust generalization can be upper bounded by a diversity term. • Achieved competitive performace against adversarial examples. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
08936080
Volume :
172
Database :
Academic Search Index
Journal :
Neural Networks
Publication Type :
Academic Journal
Accession number :
175643422
Full Text :
https://doi.org/10.1016/j.neunet.2024.106117