Stability Analysis and Generalization Bounds of Adversarial Training
–Neural Information Processing Systems
In adversarial machine learning, deep neural networks can fit the adversarial examples on the training dataset but have poor generalization ability on the test set. This phenomenon is called robust overfitting, and it can be observed when adversarially training neural nets on common datasets, including SVHN, CIFAR-10, CIFAR-100, and ImageNet. In this paper, we study the robust overfitting issue of adversarial training by using tools from uniform stability. One major challenge is that the outer function (as a maximization of the inner function) is nonsmooth, so the standard technique (e.g., Hardt et al., 2016) cannot be applied. Our approach is to consider \eta -approximate smoothness: we show that the outer function satisfies this modified smoothness assumption with \eta being a constant related to the adversarial perturbation \epsilon .
Neural Information Processing Systems
Oct-11-2024, 08:22:52 GMT
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