基于GAN的神经网络零知识对抗训练防御

Guanxiong Liu, Issa M. Khalil, Abdallah Khreishah
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引用次数: 13

摘要

神经网络分类器已经在广泛的应用中得到了成功的应用。然而,他们对无攻击环境的潜在假设已经被敌对的例子所推翻。研究人员试图开发防御措施;然而,现有的方法还远远不能为这一不断发展的问题提供有效的解决办法。在本文中,我们设计了一种基于生成式对抗网络(GAN)的零知识对抗训练防御,称为ZK-GanDef,它在训练过程中不消耗对抗示例。因此,ZK-GanDef不仅在训练中有效,而且对新的对抗示例也具有适应性。与全知识方法相比,这种优势是以测试精度的小下降为代价的。我们的实验表明,与零知识方法相比,ZK-GanDef在对抗样本上的测试准确率提高了49.17%。更重要的是,它的测试精度接近最先进的全知识方法(最大退化率为8.46%),而训练时间却少得多。
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ZK-GanDef: A GAN Based Zero Knowledge Adversarial Training Defense for Neural Networks
Neural Network classifiers have been used successfully in a wide range of applications. However, their underlying assumption of attack free environment has been defied by adversarial examples. Researchers tried to develop defenses; however, existing approaches are still far from providing effective solutions to this evolving problem. In this paper, we design a generative adversarial net (GAN) based zero knowledge adversarial training defense, dubbed ZK-GanDef, which does not consume adversarial examples during training. Therefore, ZK-GanDef is not only efficient in training but also adaptive to new adversarial examples. This advantage comes at the cost of small degradation in test accuracy compared to full knowledge approaches. Our experiments show that ZK-GanDef enhances test accuracy on adversarial examples by up-to 49.17% compared to zero knowledge approaches. More importantly, its test accuracy is close to that of the state-of-the-art full knowledge approaches (maximum degradation of 8.46%), while taking much less training time.
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