On Benign Features in Malware Detection

Michael Cao, Sahar Badihi, Khaled Ahmed, Peiyu Xiong, J. Rubin
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引用次数: 10

Abstract

This paper investigates the problem of classifying Android applications into malicious and benign. We analyze the performance of a popular malware detection tool, Drebin, and show that its correct classification decisions often stem from using benign rather than malicious features for making predictions. That, effectively, turns the classifier into a benign app detector rather than a malware detector. While such behavior allows the classifier to achieve a high detection accuracy, it also makes it vulnerable to attacks, e.g., by a malicious app pretending to be benign by using features similar to those of benign apps. In this paper, we propose an approach for deprioritizing benign features in malware detection, focusing the detection on truly malicious portions of the apps. We show that our proposed approach makes a classifier more resilient to attacks while still allowing it to maintain a high detection accuracy.
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论恶意软件检测中的良性特征
本文研究了Android应用程序的恶意和良性分类问题。我们分析了一种流行的恶意软件检测工具Drebin的性能,并表明其正确的分类决策通常源于使用良性而非恶意特征进行预测。这有效地将分类器变成了一个良性的应用程序检测器,而不是恶意软件检测器。虽然这样的行为可以让分类器达到很高的检测精度,但它也使它容易受到攻击,例如,恶意应用程序通过使用与良性应用程序相似的功能假装是良性的。在本文中,我们提出了一种在恶意软件检测中降低良性特征优先级的方法,将检测重点放在应用程序的真正恶意部分上。我们表明,我们提出的方法使分类器对攻击更有弹性,同时仍然允许它保持较高的检测精度。
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