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Limitations of the Lipschitz Constant as a Defense Against Adversarial Examples

机译:Lipschitz常数作为对抗对抗性例子的局限性

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摘要

Several recent papers have discussed utilizing Lipschitz constants to limit the susceptibility of neural networks to adversarial examples. We analyze recently proposed methods for computing the Lipschitz constant. We show that the Lipschitz constant may indeed enable adversarially robust neural networks. However, the methods currently employed for computing it suffer from theoretical and practical limitations. We argue that addressing this shortcoming is a promising direction for future research into certified adversarial defenses.
机译:最近有几篇论文讨论了使用Lipschitz常数将神经网络的敏感性限制于对抗性示例。我们分析了最近提出的用于计算Lipschitz常数的方法。我们表明,Lipschitz常数确实可以启用对抗性强的神经网络。但是,当前用于计算它的方法受到理论和实践上的限制。我们认为解决这一缺点是未来对认证对抗防御的研究的有希望的方向。

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