English

Fast Adversarial Training against Sparse Attacks Requires Loss Smoothing

Machine Learning 2025-11-03 v2 Artificial Intelligence

Abstract

This paper studies fast adversarial training against sparse adversarial perturbations bounded by l0l_0 norm. We demonstrate the challenges of employing 11-step attacks on l0l_0 bounded perturbations for fast adversarial training, including degraded performance and the occurrence of catastrophic overfitting (CO). We highlight that CO in l0l_0 adversarial training is caused by sub-optimal perturbation locations of 11-step attack. Theoretical and empirical analyses reveal that the loss landscape of l0l_0 adversarial training is more craggy compared to its ll_\infty, l2l_2 and l1l_1 counterparts. Moreover, we corroborate that the craggy loss landscape can aggravate CO. To address these issues, we propose Fast-LS-l0l_0 that incorporates soft labels and the trade-off loss function to smooth the adversarial loss landscape. Extensive experiments demonstrate our method can overcome the challenge of catastrophic overfitting, achieve state-of-the-art performance, and narrow down the performance gap between 11-step and multi-step adversarial training against sparse attacks.

Cite

@article{arxiv.2502.21041,
  title  = {Fast Adversarial Training against Sparse Attacks Requires Loss Smoothing},
  author = {Xuyang Zhong and Yixiao Huang and Chen Liu},
  journal= {arXiv preprint arXiv:2502.21041},
  year   = {2025}
}
R2 v1 2026-06-28T22:01:49.463Z