English

Benign Overfitting in Adversarially Robust Linear Classification

Machine Learning 2022-01-03 v1 Optimization and Control Machine Learning

Abstract

"Benign overfitting", where classifiers memorize noisy training data yet still achieve a good generalization performance, has drawn great attention in the machine learning community. To explain this surprising phenomenon, a series of works have provided theoretical justification in over-parameterized linear regression, classification, and kernel methods. However, it is not clear if benign overfitting still occurs in the presence of adversarial examples, i.e., examples with tiny and intentional perturbations to fool the classifiers. In this paper, we show that benign overfitting indeed occurs in adversarial training, a principled approach to defend against adversarial examples. In detail, we prove the risk bounds of the adversarially trained linear classifier on the mixture of sub-Gaussian data under p\ell_p adversarial perturbations. Our result suggests that under moderate perturbations, adversarially trained linear classifiers can achieve the near-optimal standard and adversarial risks, despite overfitting the noisy training data. Numerical experiments validate our theoretical findings.

Keywords

Cite

@article{arxiv.2112.15250,
  title  = {Benign Overfitting in Adversarially Robust Linear Classification},
  author = {Jinghui Chen and Yuan Cao and Quanquan Gu},
  journal= {arXiv preprint arXiv:2112.15250},
  year   = {2022}
}

Comments

24 pages, 5 figures

R2 v1 2026-06-24T08:36:19.102Z