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Quantifying the impact of adversarial evasion attacks on machine learning based android malware classifiers

机译:量化对抗性规避攻击对基于机器学习的android恶意软件分类器的影响

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With the proliferation of Android-based devices, malicious apps have increasingly found their way to user devices. Many solutions for Android malware detection rely on machine learning; although effective, these are vulnerable to attacks from adversaries who wish to subvert these algorithms and allow malicious apps to evade detection. In this work, we present a statistical analysis of the impact of adversarial evasion attacks on various linear and non-linear classifiers, using a recently proposed Android malware classifier as a case study. We systematically explore the complete space of possible attacks varying in the adversary's knowledge about the classifier; our results show that it is possible to subvert linear classifiers (Support Vector Machines and Logistic Regression) by perturbing only a few features of malicious apps, with more knowledgeable adversaries degrading the classifier's detection rate from 100% to 0% and a completely blind adversary able to lower it to 12%. We show non-linear classifiers (Random Forest and Neural Network) to be more resilient to these attacks. We conclude our study with recommendations for designing classifiers to be more robust to the attacks presented in our work.
机译:随着基于Android的设备的泛滥,恶意应用越来越多地进入用户设备。 Android恶意软件检测的许多解决方案都依赖于机器学习。尽管有效,但它们容易受到来自希望破坏这些算法并允许恶意应用逃避检测的对手的攻击。在这项工作中,我们使用最近提出的Android恶意软件分类器作为案例研究,对对抗逃避攻击对各种线性和非线性分类器的影响进行了统计分析。我们根据对手对分类器的了解,系统地探索可能攻击的完整空间;我们的结果表明,可以通过仅干扰恶意应用程序的一些功能来破坏线性分类器(支持向量机和逻辑回归),知识渊博的对手会将分类器的检测率从100%降为0%,而完全盲目的对手则可以降低到12%我们显示了非线性分类器(随机森林和神经网络)对这些攻击更具弹性。我们在研究结束时提出了一些建议,这些建议旨在设计分类器,使其对我们的工作中提出的攻击更加可靠。

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