Unlabeled Data Improves Adversarial Robustness
Abstract
We demonstrate, theoretically and empirically, that adversarial robustness can significantly benefit from semisupervised learning. Theoretically, we revisit the simple Gaussian model of Schmidt et al. that shows a sample complexity gap between standard and robust classification. We prove that unlabeled data bridges this gap: a simple semisupervised learning procedure (self-training) achieves high robust accuracy using the same number of labels required for achieving high standard accuracy. Empirically, we augment CIFAR-10 with 500K unlabeled images sourced from 80 Million Tiny Images and use robust self-training to outperform state-of-the-art robust accuracies by over 5 points in (i) $\ell_\infty$ robustness against several strong attacks via adversarial training and (ii) certified $\ell_2$ and $\ell_\infty$ robustness via randomized smoothing. On SVHN, adding the dataset's own extra training set with the labels removed provides gains of 4 to 10 points, within 1 point of the gain from using the extra labels.
Cite
Text
Carmon et al. "Unlabeled Data Improves Adversarial Robustness." Neural Information Processing Systems, 2019.Markdown
[Carmon et al. "Unlabeled Data Improves Adversarial Robustness." Neural Information Processing Systems, 2019.](https://mlanthology.org/neurips/2019/carmon2019neurips-unlabeled/)BibTeX
@inproceedings{carmon2019neurips-unlabeled,
title = {{Unlabeled Data Improves Adversarial Robustness}},
author = {Carmon, Yair and Raghunathan, Aditi and Schmidt, Ludwig and Duchi, John C. and Liang, Percy},
booktitle = {Neural Information Processing Systems},
year = {2019},
pages = {11192-11203},
url = {https://mlanthology.org/neurips/2019/carmon2019neurips-unlabeled/}
}