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A SVM-Based Malware Detection Mechanism for Android Devices

机译:基于SVM的Android设备恶意软件检测机制

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Currently, Android phones accounted for over 85 % of all smartphone sales as of 2017. Because the system allows users to install the unofficial apps, it will be targeted by malware easily. Using general anti-virus software to scan apps usually detected a known virus species only. As for new type of unknown variant, is not detectable normally. In this paper, we present a SVM-based mechanism to detect the malware and normal apps. The proposed idea scanning and recording features for both required and used permissions of the list. We adopt the LibSVM to classify the unknown apps. The experimental results indicate the accurate rate of 99% for the correct identification of both benign and malware even for the unknown applications. We propose not only a simple but also feasible approach to detect mobile apps.
机译:目前,Android手机占截至2017年所有智能手机销售额的85%。因为系统允许用户安装非官方应用程序,它将通过恶意软件进行目标。使用一般防病毒软件扫描应用程序通常仅检测到已知的病毒物种。至于新类型的未知变体,通常无法检测到。在本文中,我们介绍了一种基于SVM的机制来检测恶意软件和普通应用。所需的思想扫描和记录功能,了解列表所需和使用的许可。我们采用libsvm对未知应用程序进行分类。实验结果表明,即使对于未知的应用,良好识别良性和恶意软件的准确速率为99%。我们不仅提出了一种检测移动应用程序的简单但也是可行的方法。

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