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A Study of Android Malware Detection Techniques and Machine Learning

机译:Android恶意软件检测技术与机器学习研究

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Android OS is one of the widely used mobile Operating Systems. The number of malicious applications and adwares are increasing constantly on par with the number of mobile devices. A great number of commercial signature based tools are available on the market which prevent to an extent the penetration and distribution of malicious applications. Numerous researches have been conducted which claims that traditional signature based detection system work well up to certain level and mal-ware authors use numerous techniques to evade these tools. So given this state of affairs, there is an increasing need for an alternative, really tough malware detection system to complement and rectify the signature based system. Recent substantial research focused on machine learning algorithms that analyze features from malicious application and use those features to classify and detect unknown malicious applications. This study summarizes the evolution of malware detection techniques based on machine learning algorithms focused on the Android OS.
机译:Android OS是广泛使用的移动操作系统之一。恶意应用程序和adwares的数量不断随着移动设备的数量而不断增加。市场上有大量的商业签名的工具可在市场上提供,防止渗透和分配恶意应用。已经进行了许多研究,这些研究声称基于传统的签名签名的检测系统工作良好到某些级别和MAL-Ware作者使用许多技术来避免这些工具。所以鉴于这种状况,越来越需要替代,非常艰难的恶意软件检测系统来补充和纠正基于签名的系统。最近的实质性研究专注于机器学习算法,分析来自恶意应用程序的功能,并使用这些功能进行分类和检测未知的恶意应用程序。本研究总结了基于机器学习算法的恶意软件检测技术的演变,其专注于Android OS。

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