HamDroid: permission-based harmful android anti-malware detection using neural networks

被引:0
|
作者
Saeed Seraj
Siavash Khodambashi
Michalis Pavlidis
Nikolaos Polatidis
机构
[1] University of Brighton,School of Architecture, Technology and Engineering
[2] Islamic Azad University,Department of Computer Engineering, Yadegar
来源
关键词
Android; Malware detection; Fake anti-malware; Neural networks;
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暂无
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学科分类号
摘要
Android platforms are a popular target for attackers, while many users around the world are victims of Android malwares threatening their private information. Numerous Android anti-malware applications are fake and do not work as advertised because they have been developed either by amateur programmers or by software companies that are not focused on the security aspects of the business. Such applications usually ask for and generally receive non-necessary permissions which at the end collect sensitive information. The rapidly developing fake anti-malware is a serious problem, and there is a need for detection of harmful Android anti-malware. This article delivers a dataset of Android anti-malware, including malicious or benign, and a customized multilayer perceptron neural network that is being used to detect anti-malware based on the permissions of the applications. The results show that the proposed method can detect with very high accuracy fake anti-malware, while it outperforms other standard classifiers in terms of accuracy, precision, and recall.
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页码:15165 / 15174
页数:9
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