Malware detection techniques and tools for Android

S. Rani, Dr. Kanwalvir Singh Dhindsa
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Abstract

Smartphone, with its powerful capabilities, has been wildly used in every area of our day-to-day life. The enormous kinds of applications installed in these smartphones like WhatsApp and Viber have changed the way people live and communicate. An estimate by Gartner indicates that 90% of the phones by the end of 2018 will be smartphones (MobileStorm, 2014). The most popular mobile operating system today in the industry is Android. However, with the prevalence of Android smartphone, malware authors have started to target it. Although mobile anti-malware solutions could be installed to scan malicious apps before they are made available for download, existing mobile anti-malware software relies exclusively upon a prior knowledge of malware samples in order to extract and deploy signatures for subsequent detection. Moreover, malware writers may update existing malware samples to dodge detection. Hence, this imprudent nature makes them inadequate in identifying new or mutated malware. This paper explores different techniques and tools available to analyse and detect Android malware. It also highlights the features and limitations of these techniques and tools.
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Android恶意软件检测技术和工具
智能手机,以其强大的功能,已被广泛应用于我们日常生活的各个领域。这些智能手机上安装的各种各样的应用程序,如WhatsApp和Viber,改变了人们生活和交流的方式。据Gartner估计,到2018年底,90%的手机将是智能手机(MobileStorm, 2014)。目前业界最流行的移动操作系统是Android。然而,随着Android智能手机的普及,恶意软件作者开始瞄准它。尽管可以安装移动反恶意软件解决方案来扫描恶意应用程序,但现有的移动反恶意软件完全依赖于对恶意软件样本的先验知识,以便提取和部署签名以供后续检测。此外,恶意软件编写者可能会更新现有的恶意软件样本以躲避检测。因此,这种轻率的性质使它们在识别新的或变异的恶意软件方面不足。本文探讨了分析和检测Android恶意软件的不同技术和工具。本文还重点介绍了这些技术和工具的特点和局限性。
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