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A feature-vector generative adversarial network for evading PDF malware classifiers

机译:一种用于逃避PDF恶意软件分类器的特征 - 矢量生成妇女网络

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摘要

Cyber-Physical Systems (CPS) are increasingly utilizing machine learning (ML) algorithms to resolve different control and decision making problems. CPS are traditionally vulnerable to evasion attacks and adversarial examples, hence the integration of learning algorithms requires that these vulnerabilities are reevaluated to make the cyber-physical systems more secure and robust. In this work, we propose a novel evasion method based on a feature-vector generative adversarial network (fvGAN) to attack a learning-based malware classifier. The generative adversarial network (GAN) has been widely used in the realistic fake-image generation, but it has rarely been studied for adversarial malware generation. This work uses the fvGAN to generate adversarial feature vectors in the feature space, and then transforms them into actual adversarial malware examples. We have experimentally investigated the effectiveness of the proposed approach on a well-known PDF malware classifier, PDFRate, and evaluated the fvGAN-based attack in four evasion scenarios. The results show that the fvGAN model has a high evasion rate within a limited time. We have also compared the proposed approach with two existing attack algorithms, namely Mimicry and GD-KDE, and the results prove that the proposed scheme has better performance both in terms of evasion rate and execution cost. (C) 2020 Elsevier Inc. All rights reserved.
机译:网络物理系统(CPS)越来越多地利用机器学习(ML)算法来解决不同的控制和决策问题。 CPS传统上容易受到逃避攻击和对抗示例的影响,因此学习算法的集成要求这些漏洞重新评估以使网络物理系统更安全和强大。在这项工作中,我们提出了一种基于特征 - 传染媒介生成的对冲网络(FVGAN)的新颖的逃避方法来攻击基于学习的恶意软件分类器。生成的对抗性网络(GAN)已广泛用于现实的假图像生成,但很少已经研究过对抗恶意软件生成。此工作使用FVGan在要素空间中生成对手特征向量,然后将它们转换为实际的对抗恶意软件示例。我们通过实验研究了所提出的方法在众所周知的PDF恶意软件分类器,PDFRate中的有效性,并在四种逃避情景中评估了基于FVGAN的攻击。结果表明,FVGAN模型在有限的时间内具有高的逃避率。我们还将所提出的方法与两个现有的攻击算法进行比较,即模拟和GD-KDE,结果证明了该方案在逃避率和执行成本方面具有更好的性能。 (c)2020 Elsevier Inc.保留所有权利。

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