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ON THE UTILITY OF CONDITIONAL GENERATION BASED MUTUAL INFORMATION FOR CHARACTERIZING ADVERSARIAL SUBSPACES

机译:基于条件生成的互信息用于刻划子空间的实用性

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Recent studies have found that deep learning systems are vulnerable to adversarial examples; e.g., visually unrecognizable adversarial images can easily be crafted to result in misclassification. The robustness of neural networks has been studied extensively in the context of adversary detection, which compares a metric that exhibits strong discriminate power between natural and adversarial examples. In this paper, we propose to characterize the adversarial subspaces through the lens of mutual information (MI) approximated by conditional generation methods. We use MI as an information-theoretic metric to strengthen existing defenses and improve the performance of adversary detection. Experimental results on Mag-Net defense demonstrate that our proposed MI detector can strengthen its robustness against powerful adversarial attacks.
机译:最近的研究发现,深度学习系统容易受到对抗性例子的攻击。例如,视觉上无法识别的对抗图像很容易制作出来,导致分类错误。在敌方检测的背景下,已经对神经网络的鲁棒性进行了广泛的研究,该方法比较了在自然和对抗性示例之间表现出强大区分能力的指标。在本文中,我们建议通过条件生成方法近似的互信息(MI)的镜头来表征对抗子空间。我们使用MI作为信息理论指标,以增强现有防御能力并提高对手检测的性能。 Mag-Net防御的实验结果表明,我们提出的MI检测器可以增强其对强大的对抗攻击的鲁棒性。

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