A Machine Learning Approach to the Detection and Analysis of Android Malicious Apps

K. Shibija, Raymond Joseph
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引用次数: 2

Abstract

Today, the use of mobile phone is growing in all the areas and unfortunately, it made the mobile phones a continuous target of cyber attackers. The main source of these kinds of attack is the malicious applications which a user will be downloading from trusted mediums such as Playstore, App store and all. Considering the millions of applications, the play store is having, it is impossible to identify which one is malicious and which one is not for a user. Even after the installation, the user will not be able to understand the activities the application will be performing in the mobile device. A lot of problems are arising nowadays because of this and a lot of confidential information is getting leaked from the mobile device. So, it is important to have a platform where it should be able to distinguish a malicious app from the set of benign app. This system is a mobile android application which will be working based on machine learning. The application will perform both static and dynamic analysis to identify the malicious activities of an application. The static analysis is mainly focused on the manifest.xml file of an Android application and the dynamic analysis will be based on the actions it will be triggering while running on a mobile device. The system is capable of combining both static and dynamic analysis results. The main aim of this project is to develop an efficient and effective android mobile application with a high success rate of distinguishing malicious from benign applications.
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Android恶意应用检测与分析的机器学习方法
今天,手机的使用在各个领域都在增长,不幸的是,它使手机成为网络攻击者的持续目标。这类攻击的主要来源是用户从Playstore、App store等可信媒体下载的恶意应用程序。考虑到游戏商店拥有的数百万个应用程序,不可能确定哪些是恶意的,哪些不是针对用户的。即使在安装之后,用户也无法理解应用程序将在移动设备上执行的活动。因此,现在出现了很多问题,许多机密信息正在从移动设备泄露。因此,重要的是要有一个平台,它应该能够区分恶意应用程序和一组良性应用程序。这个系统是一个移动android应用程序,将基于机器学习工作。应用程序将执行静态和动态分析,以识别应用程序的恶意活动。静态分析主要关注Android应用程序的manifest.xml文件,动态分析将基于它在移动设备上运行时将触发的操作。该系统能够将静态和动态分析结果结合起来。本课题的主要目的是开发一个高效的android移动应用程序,具有较高的区分恶意和良性应用程序的成功率。
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