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Jan, 2018
评估神经网络的稳健性:一种极值理论方法
Evaluating the Robustness of Neural Networks: An Extreme Value Theory Approach
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Tsui-Wei Weng, Huan Zhang, Pin-Yu Chen, Jinfeng Yi, Dong Su...
TL;DR
本文提出一种基于局部Lipschitz常数估计问题的鲁棒性分析的理论,使用极值理论来高效评估,得到了一个新的鲁棒性指标CLEVER,该指标不依赖于攻击方法且适用于任何神经网络分类器。
Abstract
The robustness of
neural networks
to
adversarial examples
has received great attention due to security implications. Despite various attack approaches to crafting visually imperceptible
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