对抗性规避攻击对基于混合特征训练的基于ml的Android恶意分类器的影响

Husnain Rafiq, N. Aslam, B. Issac, R. H. Randhawa
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引用次数: 0

摘要

由于基于Android的智能手机在当前时代的广泛使用,Android恶意软件已经成为一个重要的关注。从过去十年中基于机器学习的方法的进步来看,研究界对应用这些方法来对抗Android恶意软件表现出了极大的兴趣。然而,这些基于ml的分类器很容易受到攻击。攻击者可以故意伪造输入应用程序,以迫使分类算法产生所需的输出(逃避攻击)。在这项研究中,我们首先提出了HybridDroid,这是一个基于n - ml的Android恶意软件分类器,它由n个混合特征训练而成,并使用基于树的管道优化技术(TPOT)进行优化。我们的实验表明,HybriDroid在36000个恶意软件和良性Android应用程序的平衡摘录上实现了高达99.2%的显著检测准确率。其次,我们探讨了所提出的模型在对抗环境中的有效性。我们在HybriDroid上应用了模仿攻击、特征移除攻击和特征移除与注入攻击。我们的实验表明,基于机器学习的恶意软件分类器极易受到对抗性规避攻击。最后,我们提出了未来的方向,以加强基于机器学习的Android恶意软件分类器在对抗设置中的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Impact of Adversarial Evasion Attacks on ML-based Android Malware Classifier Trained on Hybrid Features
Due to the widespread usage of Android-based smartphones in the current era, Android malware has become a significant concern. From the perspective of t he a dvances in machine learning-based approaches in the previous decade, the research community has shown a dominant interest in applying these to counter Android malware. However, these ML-based classifiers are vulnerable to attacks. An attacker can deliberately fabricate the input application to force the classification algorithm to produce the desired output (evasion attack). In this study, first, w e propose HybridDroid, a n M L-based Android malware classifier trained o n hybrid features a nd optimized using the tree-based pipeline optimization technique (TPOT). Our experiments show that HybriDroid achieves a remarkable detection accuracy of up to 99.2% on a balanced excerpt of 36,000 malware and benign Android apps. Secondly, we explore the effectiveness of the proposed model in adversarial environments. We apply mimicry attacks, feature removal attacks and feature removal with injection attacks on HybriDroid. Our experiments reveal that ML-based malware classifiers are highly vulnerable to adversarial evasion attacks. Finally, we propose future directions to harden the security of ML-based Android malware classifiers in adversarial settings.
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