Android Adware Detection Using Machine Learning

S. Bagui, D. Benson
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引用次数: 2

Abstract

Adware, an advertising-supported software, becomes a type of malware when it automatically delivers unwanted advertisements to an infected device, steals user information, and opens other vulnerabilities that allow other malware and adware to be installed. With the rise of more and complex evasive malware, specifically adware, better methods of detecting adware are required. Though a lot of work has been done on malware detection in general, very little focus has been put on the adware family. The novelty of this paper lies in analyzing the individual adware families. To date, no work has been done on analyzing the individual adware families. In this paper, using the CICAndMal2017 dataset, feature selection is performed using information gain, and classification is performed using machine learning. The best attributes for classification of each of the individual adware families using network traffic samples are presented. The results present an average classification rate that is an improvement over previous works for classification of individual adware families.
使用机器学习的Android广告软件检测
广告软件是一种广告支持的软件,当它自动向受感染的设备发送不需要的广告,窃取用户信息,并打开其他漏洞,允许安装其他恶意软件和广告软件时,它就变成了一种恶意软件。随着越来越多和复杂的规避恶意软件,特别是广告软件的兴起,需要更好的检测广告软件的方法。尽管在恶意软件检测方面已经做了大量的工作,但对广告软件家族的关注却很少。本文的新颖之处在于对单个广告家族进行了分析。到目前为止,还没有对单个广告软件家族进行分析的工作。在本文中,使用CICAndMal2017数据集,使用信息增益进行特征选择,使用机器学习进行分类。提出了使用网络流量样本对每个单独的广告软件家族进行分类的最佳属性。结果提出了一个平均分类率,这是一个改进,比以往的工作分类的个别广告软件家族。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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