识别未知的Android恶意软件与特征提取和分类技术

L. Apvrille, A. Apvrille
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引用次数: 27

摘要

不幸的是,Android恶意软件很难潜入市场。虽然现在已知的恶意软件及其变种可以很好地被防病毒扫描程序检测到,但新的未知恶意软件与其他恶意软件(例如:“0天”),仍然是一个问题。为了发现这种新的恶意软件,SherlockDroid框架过滤了大量的应用程序,只保留最有可能是恶意的,以供反病毒团队将来检查。除了从市场上抓取应用程序外,SherlockDroid还提取代码级功能,然后用Alligator对未知应用程序进行分类。鳄鱼是一个分类工具,有效地和自动地结合了几种分类算法。为了证明我们方法的有效性,我们在2014年7月和2014年10月的两次抓取活动中提取了600,000多个应用程序的属性并对其进行了分类,并检测到一种新的恶意软件Android/ odpa . tr。间谍和两个新的风险软件。加上其他发现,SherlockDroid的“耻辱之堂”增加到9个完全未知的恶意软件和潜在的不受欢迎的应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Unknown Android Malware with Feature Extractions and Classification Techniques
Android malware unfortunately have little difficulty to sneak in marketplaces. While known malware and their variants are nowadays quite well detected by antivirus scanners, new unknown malware, which are fundamentally different from others (e.g. "0-day"), remain an issue. To discover such new malware, the SherlockDroid framework filters masses of applications and only keeps the most likely to be malicious for future inspection by antivirus teams. Apart from crawling applications from marketplaces, SherlockDroid extracts code-level features, and then classifies unknown applications with Alligator. Alligator is a classification tool that efficiently and automatically combines several classification algorithms. To demonstrate the efficiency of our approach, we have extracted properties and classified over 600,000 applications during two crawling campaigns in July 2014 and October 2014, with the detection of one new malware, Android/Odpa.A!tr.spy, and two new riskware. With other findings, this increases SherlockDroid's "Hall of Shame" to 9 totally unknown malware and potentially unwanted applications.
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