对抗鲁棒性的优化L2范数损失

Xuanyu Zhang, Shi-You Xu, Jun Hu, Zhiyuan Xie
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引用次数: 0

摘要

虽然对抗训练是使模型获得更好的对抗鲁棒性的最常用方法,但其导致准确率降低的缺点一直困扰着学术界。近年来,许多文章指出良好的Lipschitz连续性有助于模型获得更好的鲁棒性和标准精度,并认为存在既鲁棒又准确的模型。然而,即使添加了Lipschitz连续性约束,许多方法在模型上的表现仍然不太好。因此,我们从Lipschitz连续性的角度讨论了现有Lipschitz连续性度量在深度学习中的不足,并提出了一种更适合深度学习的Lipschitz连续性度量。理论和实验证明,混合可以显著增强模型的局部Lipschitz连续性。利用这一特性,我们利用目标攻击生成大量混合对抗样本来填充整个邻域空间。与大多数现有的对抗训练方法相比,我们的方法使模型更平滑地定位,并显着提高了模型的对抗鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized L2 Norm Loss for Adversarial Robustness
Although adversarial training is the most common method to make models obtain better adversarial robustness, its drawback of leading to reduced accuracy has been plaguing the academic community. In recent years, many articles have pointed out that good Lipschitz continuity helps models obtain better robustness and standard accuracy, and argued that models that are both robust and accurate exist. However, many methods still perform less well with models even with the addition of Lipschitz continuity constraints. Therefore, we discuss the drawbacks of existing Lipschitz continuity metric in deep learning in terms of Lipschitz continuity, and propose a counteracting Lipschitz continuity metric that is more suitable for deep learning. We demonstrate theoretically and experimentally that Mixup can significantly enhance the local Lipschitz continuity of the model. Using this property, we generate a large number of mix confrontation samples using Target attack to fill the entire neighborhood space. Our method gives the model a smoother localization and significantly improves the adversarial robustness of the model beyond most existing adversarial training methods.
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