多家族Android恶意软件检测的操作码程序的有效性

G. Canfora, A. D. Lorenzo, Eric Medvet, F. Mercaldo, C. A. Visaggio
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引用次数: 102

摘要

随着智能手机的广泛普及及其在众多过程和活动中的使用,这些设备一直在处理越来越多的敏感资源。因此,攻击者为Android(最广泛的移动平台)制作了大量恶意软件应用程序,通常是通过对现有应用程序进行轻微修改,从而导致恶意软件以家族为单位组织。一些文献表明,操作码不仅在Android平台上具有检测恶意软件的信息。在本文中,我们研究了操作码的ngrams频率是否有效检测Android恶意软件,以及是否存在一些重要的恶意软件家族,它们或多或少有效。为此,我们设计了一种基于最先进的分类器的方法,应用于操作码的频率。然后,我们在一个由11120个应用程序组成的最新数据集上进行了实验评估,其中5560个是属于几个不同家族的恶意软件。结果表明,该方法平均准确率可达97%,对多个恶意软件家族的检测均达到了完美的检测率。
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Effectiveness of Opcode ngrams for Detection of Multi Family Android Malware
With the wide diffusion of smartphones and their usage in a plethora of processes and activities, these devices have been handling an increasing variety of sensitive resources. Attackers are hence producing a large number of malware applications for Android (the most spread mobile platform), often by slightly modifying existing applications, which results in malware being organized in families. Some works in the literature showed that opcodes are informative for detecting malware, not only in the Android platform. In this paper, we investigate if frequencies of ngrams of opcodes are effective in detecting Android malware and if there is some significant malware family for which they are more or less effective. To this end, we designed a method based on state-of-the-art classifiers applied to frequencies of opcodes ngrams. Then, we experimentally evaluated it on a recent dataset composed of 11120 applications, 5560 of which are malware belonging to several different families. Results show that an accuracy of 97% can be obtained on the average, whereas perfect detection rate is achieved for more than one malware family.
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