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Malware detection using static analysis in Android: a review of FeCO (features, classification, and obfuscation)

机译:使用静态分析在Android中的恶意软件检测:对FECO(特征,分类和混淆)的评论

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Android is a free open-source operating system (OS), which allows an in-depth understanding of its architecture. Therefore, many manufacturers are utilizing this OS to produce mobile devices (smartphones, smartwatch, and smart glasses) in different brands, including Google Pixel, Motorola, Samsung, and Sony. Notably, the employment of OS leads to a rapid increase in the number of Android users. However, unethical authors tend to develop malware in the devices for wealth, fame, or private purposes. Although practitioners conduct intrusion detection analyses, such as static analysis, there is an inadequate number of review articles discussing the research efforts on this type of analysis. Therefore, this study discusses the articles published from 2009 until 2019 and analyses the steps in the static analysis (reverse engineer, features, and classification) with taxonomy. Following that, the research issue in static analysis is also highlighted. Overall, this study serves as the guidance for novice security practitioners and expert researchers in the proposal of novel research to detect malware through static analysis.
机译:Android是一个免费的开源操作系统(OS),允许深入了解其体系结构。因此,许多制造商正在利用此操作系统在不同品牌中生产移动设备(智能手机,智能手表和智能眼镜),包括谷歌像素,摩托罗拉,三星和索尼。值得注意的是,OS的就业导致Android用户数量快速增加。然而,不道德的作者倾向于在设备中开发恶意软件,以获得财富,名人的名望或私人目的。尽管从业者进行入侵检测分析,如静态分析,但讨论了这种类型分析的研究努力的审查文章数量不足。因此,本研究讨论了从2009年发布的文章直到2019年,并分析了具有分类法的静态分析(逆向工程,特征和分类)中的步骤。在此之后,还突出了静态分析中的研究问题。总体而言,本研究担任新手安全从业者和专家研究人员在提议通过静态分析来检测恶意软件的提议。

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