defense arXiv Apr 21, 2026 · 4w ago
Jiaming Zhang, Meng Ding, Shaopeng Fu et al. · King Abdullah University of Science and Technology · Renmin University of China +2 more
Theoretical analysis proving Vision Transformers achieve benign overfitting under adversarial training with bounded perturbations
Input Manipulation Attack vision
Despite the remarkable success of Vision Transformers (ViTs) across a wide range of vision tasks, recent studies have revealed that they remain vulnerable to adversarial examples, much like Convolutional Neural Networks (CNNs). A common empirical defense strategy is adversarial training, yet the theoretical underpinnings of its robustness in ViTs remain largely unexplored. In this work, we present the first theoretical analysis of adversarial training under simplified ViT architectures. We show that, when trained under a signal-to-noise ratio that satisfies a certain condition and within a moderate perturbation budget, adversarial training enables ViTs to achieve nearly zero robust training loss and robust generalization error under certain regimes. Remarkably, this leads to strong generalization even in the presence of overfitting, a phenomenon known as \emph{benign overfitting}, previously only observed in CNNs (with adversarial training). Experiments on both synthetic and real-world datasets further validate our theoretical findings.
transformer King Abdullah University of Science and Technology · Renmin University of China · State University of New York at Buffalo +1 more