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A novel parallel classifier scheme for vulnerability detection in Android

机译:Android中漏洞检测的新颖并行分类方案

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摘要

Android is one of the most commonly used mobile operating systems; however, its open-source nature and flexibility of usage attract a lot of attention from cybercriminals. In recent years, the rapid increase in malware has become a major cause of concern amongst Android users. The cybercriminals either aim to exploit confidential information from users or try to corrupt their systems by infecting them with malicious code. In order to make Android systems more secure, several malware detection techniques using static, dynamic, and hybrid analysis have been introduced in recent times; however, these techniques are inaccurate and have low efficiency. The paper not only explains how distinctive parallel classifiers can be used for detecting zero-day android malware but also addresses the oncoming highly elusive vulnerabilities. The proposed methodology combines characteristics from various parallel classifiers using expectation maximization to achieve 98.27% accuracy. (C) 2019 Elsevier Ltd. All rights reserved.
机译:Android是最常用的移动操作系统之一;然而,它的开源性质和使用的灵活性吸引了来自网络犯罪分子的很多关注。近年来,恶意软件的快速增长已成为Android用户担忧的主要原因。网络犯罪分子的目标是通过用恶意代码感染他们来利用用户的机密信息或尝试破坏其系统。为了使Android系统更安全,最近介绍了使用静态,动态和混合分析的几种恶意软件检测技术;然而,这些技术是不准确的并且效率低。本文不仅解释了独特的并行分类器如何用于检测零天和恶意软件,而且还解决了迎面而来的高度难以使用的漏洞。所提出的方法,使用预期最大化来实现各种并行分类器的特性,以达到98.27%的精度。 (c)2019年elestvier有限公司保留所有权利。

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