Abstract
It is well-known that deep neural networks (DNNs) are susceptible to adversarial attacks, exposing a severe fragility of deep learning systems. As the result, adversarial training (AT) method, by incorporating adversarial examples during training, represents a natural and effective approach to strengthen the robustness of a DNN-based classifier. However, most AT-based methods, notably PGD-AT and TRADES, typically seek a pointwise adversary that generates the worst-case adversarial example by independently perturbing each data sample, as a way to “probe” the vulnerability of the classifier. Arguably, there are unexplored benefits in considering such adversarial effects from an entire distribution. To this end, this paper presents a unified framework that connects Wasserstein distributional robustness with current state-of-the-art AT methods. We introduce a new Wasserstein cost function and a new series of risk functions, with which we show that standard AT methods are special cases of their counterparts in our framework. This connection leads to an intuitive relaxation and generalization of existing AT methods and facilitates the development of a new family of distributional robustness AT-based algorithms. Extensive experiments show that our distributional robustness AT algorithms robustify further their standard AT counterparts in various settings.
Original language | English |
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Title of host publication | International on Learning Representation (ICLR) 2022 |
Editors | Yann LeCun |
Place of Publication | USA |
Publisher | OpenReview |
Number of pages | 25 |
Publication status | Published - 2022 |
Event | International Conference on Learning Representations 2022 - Online, United States of America Duration: 25 Apr 2022 → 29 Apr 2022 Conference number: 10th https://openreview.net/group?id=ICLR.cc/2022/Conference (Peer Reviews) https://iclr.cc/Conferences/2022 (Website) |
Conference
Conference | International Conference on Learning Representations 2022 |
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Abbreviated title | ICLR 2022 |
Country/Territory | United States of America |
Period | 25/04/22 → 29/04/22 |
Internet address |
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