Feb. 13, 2024, 5:45 a.m. | Runzhi Tian Yongyi Mao

cs.LG updates on arXiv.org arxiv.org

Adversarial training may be regarded as standard training with a modified loss function. But its generalization error appears much larger than standard training under standard loss. This phenomenon, known as robust overfitting, has attracted significant research attention and remains largely as a mystery. In this paper, we first show empirically that robust overfitting correlates with the increasing generalization difficulty of the perturbation-induced distributions along the trajectory of adversarial training (specifically PGD-based adversarial training). We then provide a novel upper bound …

adversarial adversarial training attention cs.lg distribution error function loss overfitting paper research robust show standard training

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