CVAILGMar 10, 2023

Do we need entire training data for adversarial training?

arXiv:2303.06241v22 citationsh-index: 13
AI Analysis

This addresses the computational bottleneck in adversarial training for deep learning practitioners, offering a method-agnostic speedup that is incremental but practical.

The paper tackles the high training time of adversarial training by proposing a method that uses only a subset of adversarially-prone training data, achieving speedups of up to 3.52x on MNIST and 1.98x on CIFAR-10 with comparable robust accuracy, and 1.2x on ImageNet with a marginal drop in accuracy.

Deep Neural Networks (DNNs) are being used to solve a wide range of problems in many domains including safety-critical domains like self-driving cars and medical imagery. DNNs suffer from vulnerability against adversarial attacks. In the past few years, numerous approaches have been proposed to tackle this problem by training networks using adversarial training. Almost all the approaches generate adversarial examples for the entire training dataset, thus increasing the training time drastically. We show that we can decrease the training time for any adversarial training algorithm by using only a subset of training data for adversarial training. To select the subset, we filter the adversarially-prone samples from the training data. We perform a simple adversarial attack on all training examples to filter this subset. In this attack, we add a small perturbation to each pixel and a few grid lines to the input image. We perform adversarial training on the adversarially-prone subset and mix it with vanilla training performed on the entire dataset. Our results show that when our method-agnostic approach is plugged into FGSM, we achieve a speedup of 3.52x on MNIST and 1.98x on the CIFAR-10 dataset with comparable robust accuracy. We also test our approach on state-of-the-art Free adversarial training and achieve a speedup of 1.2x in training time with a marginal drop in robust accuracy on the ImageNet dataset.

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