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A Machine Learning Approach to Android Malware Detection

机译:一种用于Android恶意软件检测的机器学习方法

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With the recent emergence of mobile platforms capable of executing increasingly complex software and the rising ubiquity of using mobile platforms in sensitive applications such as banking, there is a rising danger associated with malware targeted at mobile devices. The problem of detecting such malware presents unique challenges due to the limited resources avalible and limited privileges granted to the user, but also presents unique opportunity in the required metadata attached to each application. In this article, we present a machine learning-based system for the detection of malware on Android devices. Our system extracts a number of features and trains a One-Class Support Vector Machine in an offline (off-device) manner, in order to leverage the higher computing power of a server or cluster of servers.
机译:随着能够执行越来越复杂的软件的移动平台的出现以及在银行等敏感应用程序中使用移动平台的普遍性的增加,与针对移动设备的恶意软件相关联的危险越来越大。由于可用资源有限和授予用户的特权有限,检测此类恶意软件的问题提出了独特的挑战,但在附加到每个应用程序的所需元数据中也提供了独特的机会。在本文中,我们介绍了一种基于机器学习的系统,用于检测Android设备上的恶意软件。我们的系统提取了许多功能,并以脱机(脱机)方式训练了一类支持向量机,以便利用服务器或服务器集群的更高计算能力。

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