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Android Malware Detection through Machine Learning Techniques: A Review

机译:Android Malware检测通过机器学习技术:审查

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The open source nature of Android Operating System has attracted wider adoption of the system by multiple types of developers. This phenomenon has further fostered an exponential proliferation of devices running the Android OS into different sectors of the economy. Although this development has brought about great technological advancements and ease of doing businesses (e-commerce) and social interactions, they have however become strong mediums for the uncontrolled rising cyberattacks and espionage against business infrastructures and the individual users of these mobile devices. Different cyberattacks techniques exist but attacks through malicious applications have taken the lead aside other attack methods like social engineering. Android malware have evolved in sophistications and intelligence that they have become highly resistant to existing detection systems especially those that are signature-based. Machine learning techniques have risen to become a more competent choice for combating the kind of sophistications and novelty deployed by emerging Android malwares. The models created via machine learning methods work by first learning the existing patterns of malware behaviour and then use this knowledge to separate or identify any such similar behaviour from unknown attacks. This paper provided a comprehensive review of machine learning techniques and their applications in Android malware detection as found in contemporary literature.
机译:Android操作系统的开源性质引起了多种类型的开发人员更广泛地采用了系统。这种现象进一步促进了将Android OS运行到经济不同部门的设备指数增殖。虽然这种发展带来了卓越的技术进步和易于做业务(电子商务)和社会互动,但它们已成为不受控制的崛起网络攻击和间谍对业务基础架构和这些移动设备的个人用户的强大媒介。存在不同的Cyber​​Actacks技术,但通过恶意应用的攻击已经抛开了其他攻击方法,如社会工程。 Android恶意软件在复杂和智力中发展,他们对现有的检测系统具有高度抵抗,特别是那些基于签名的检测系统。机器学习技术已经上升,成为打击通过新兴Android恶魔术部署的复杂性和新奇的更称合格的选择。通过机器学习方法创建的模型通过首先学习现有恶意软件行为模式,然后使用此知识来分离或识别来自未知攻击的任何此类类似行为。本文提供了对当代文学中的Android恶意软件检测中的机器学习技术及其应用程序的全面审查。

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