Skip to yearly menu bar Skip to main content


Poster

Unlabeled Data Improves Adversarial Robustness

Yair Carmon · Aditi Raghunathan · Ludwig Schmidt · John Duchi · Percy Liang

East Exhibition Hall B + C #34

Keywords: [ Optimization for Deep Net ] [ Algorithms -> Classification; Algorithms -> Semi-Supervised Learning; Deep Learning; Deep Learning ] [ Adversarial Learning ] [ Algorithms ]


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.

Live content is unavailable. Log in and register to view live content