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ROBUST SUPPORT VECTOR MACHINES AGAINST EVASION ATTACKS BY RANDOM GENERATED MALICIOUS SAMPLES

机译:通过随机生成的恶意样本对逃离攻击的强大支持向量机

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Pattern recognition techniques have been widely used in security-sensitive applications to distinguish malicious samples from legitimate ones. However, there usually exist some intelligent attackers who intend to have malicious samples to be misclassified as legitimate at test time, i.e. evasion attack. Current researches show that traditional Support Vector Machines (SVMs) are vulnerable to evasion attacks as they do not consider the existence of an attack. In this paper, we propose to increase the robustness of SVMs against evasion attacks by adding random generated malicious samples to the training set. The experimental result on spam filtering shows that the proposed method can increase the true positive rate of SVMs under evasion attacks without significantly affecting the false positive rate.
机译:模式识别技术已广泛用于安全敏感的应用程序,以区分恶意样本从合法的应用。然而,通常存在一些智能攻击者,这些攻击者打算将恶意样本被错误分类为在测试时间,即逃避攻击。目前的研究表明,传统的支持向量机(SVM)容易受到逃离攻击,因为它们不考虑攻击的存在。在本文中,我们建议通过向训练集添加随机生成的恶意样本来增加SVMS对逃避攻击的鲁棒性。垃圾邮件过滤的实验结果表明,所提出的方法可以在逃避攻击下提高SVMS的真正阳性率,而不会显着影响假阳性率。

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