模拟器vs真实手机:Android恶意软件检测使用机器学习

Mohammed K. Alzaylaee, S. Yerima, S. Sezer
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引用次数: 71

摘要

安卓操作系统已经成为智能手机和平板电脑上最受欢迎的操作系统,导致恶意软件迅速增加。复杂的Android恶意软件采用检测规避技术,以隐藏其恶意活动的分析工具。这些包括广泛的反模拟器技术,其中恶意软件程序试图通过检测模拟器来隐藏其恶意活动。因此,反仿真对策在Android恶意软件检测中变得越来越重要。基于真实设备的分析和检测可以缓解反仿真问题,提高动态分析的有效性。因此,在本文中,我们提出了一项基于机器学习的恶意软件检测的研究,该检测使用真实设备的动态分析。实现了一种自动提取Android手机动态特征的工具,并通过几次实验,通过几种机器学习算法对基于模拟器和基于设备的检测进行了比较分析。我们的研究表明,与仿真器相比,从设备动态分析中可以更有效地提取几个特征。研究还发现,手机上成功分析的应用程序大约多了24%。此外,所有研究的基于机器学习的检测在应用于从设备动态分析中提取的特征时表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EMULATOR vs REAL PHONE: Android Malware Detection Using Machine Learning
The Android operating system has become the most popular operating system for smartphones and tablets leading to a rapid rise in malware. Sophisticated Android malware employ detection avoidance techniques in order to hide their malicious activities from analysis tools. These include a wide range of anti-emulator techniques, where the malware programs attempt to hide their malicious activities by detecting the emulator. For this reason, countermeasures against anti-emulation are becoming increasingly important in Android malware detection. Analysis and detection based on real devices can alleviate the problems of anti-emulation as well as improve the effectiveness of dynamic analysis. Hence, in this paper we present an investigation of machine learning based malware detection using dynamic analysis on real devices. A tool is implemented to automatically extract dynamic features from Android phones and through several experiments, a comparative analysis of emulator based vs. device based detection by means of several machine learning algorithms is undertaken. Our study shows that several features could be extracted more effectively from the on-device dynamic analysis compared to emulators. It was also found that approximately 24% more apps were successfully analysed on the phone. Furthermore, all of the studied machine learning based detection performed better when applied to features extracted from the on-device dynamic analysis.
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