Abstract
The adversarial vulnerability of deep neural networks has attracted significant attention in machine learning. As causal reasoning has an instinct for modeling distribution change, it is essential to incorporate causality into analyzing this specific type of distribution change induced by adversarial attacks. However, causal formulations of the intuition of adversarial attacks and the development of robust DNNs are still lacking in the literature. To bridge this gap, we construct a causal graph to model the generation process of adversarial examples and define the adversarial distribution to formalize the intuition of adversarial attacks. From the causal perspective, we study the distinction between the natural and adversarial distribution and conclude that the origin of adversarial vulnerability is the focus of models on spurious correlations. Inspired by the causal understanding, we propose the \emph{Causal}-inspired \emph{Adv}ersarial distribution alignment method, CausalAdv, to eliminate the difference between natural and adversarial distributions by considering spurious correlations. Extensive experiments demonstrate the efficacy of the proposed method. Our work is the first attempt towards using causality to understand and mitigate the adversarial vulnerability.
Original language | English |
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Title of host publication | Proceedings of Tenth International Conference on Learning Representations, ICLR 2022 |
Publisher | International Conference on Learning Representations |
Number of pages | 20 |
Publication status | Published - 25 Apr 2022 |
Event | 10th International Conference on Learning Representations, ICLR 2022 - Virtual, Online Duration: 25 Apr 2022 → 29 Apr 2022 https://iclr.cc/Conferences/2022 https://openreview.net/group?id=ICLR.cc/2022/Conference |
Conference
Conference | 10th International Conference on Learning Representations, ICLR 2022 |
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Period | 25/04/22 → 29/04/22 |
Internet address |
User-Defined Keywords
- Adversarial examples
- Causality