MaplDroid: Malicious Android Application Detection based on Naive Bayes using Multiple

P. Bhat, Kamlesh Dutta, Sukhbir Singh
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引用次数: 2

Abstract

Android is currently the most popular operating system for mobile devices in the market. Android device is being used by every other person for everyday life activities and it has become a centre for storing personal information. Because of these reasons it attracts many hackers, who develop malicious software for attacking the platform; thus a technique that can effectively prevent the system from malware attacks is required. In this paper, an malware detection technique, MaplDroid has been proposed for detecting malware applications on Android platform. The proposed technique statically analyses the application files using features which are extracted from the manifest file. A supervised learning model based on Naive Bayes is used to classify the application as benign or malicious. MaplDroid achieved Recall score 99.12% and F1 score 83.45%.
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MaplDroid:基于多重朴素贝叶斯的恶意Android应用检测
Android是目前市场上最流行的移动设备操作系统。每个人都在使用安卓设备进行日常生活活动,它已经成为存储个人信息的中心。由于这些原因,它吸引了许多黑客,他们开发恶意软件攻击平台;因此,需要一种能够有效防止系统受到恶意软件攻击的技术。本文提出了一种用于检测Android平台恶意软件的恶意软件检测技术MaplDroid。提出的技术使用从清单文件中提取的特性静态分析应用程序文件。使用基于朴素贝叶斯的监督学习模型对应用程序进行良性或恶意分类。mappldroid的Recall得分为99.12%,F1得分为83.45%。
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