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Towards Privacy Risk Analysis in Android Applications Using Machine Learning Approaches

机译:使用机器学习方法进行Android应用程序中的隐私风险分析

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Android-based devices easily fall prey to an attack due to its free availability in the android market. These Android applications are not certified by the legitimate organization. If the user cannot distinguish between the set of permissions requested by an application and its risk, then an attacker can easily exploit the permissions to propagate malware. In this article, the authors present an approach for privacy risk analysis in Android applications using machine learning. The proposed approach can analyse and identify the malware application permissions. Here, the authors achieved high accuracy and improved F-measure through analyzing the proposed method on the M0Droid dataset and completed testing on an extensive test set with malware from the Androzoo dataset and benign applications from the Drebin dataset.
机译:基于Android的设备可在android市场上免费获得,因此很容易受到攻击。这些Android应用程序未经合法组织的认证。如果用户无法区分应用程序请求的权限集及其风险,则攻击者可以轻松利用这些权限传播恶意软件。在本文中,作者提出了一种使用机器学习在Android应用程序中进行隐私风险分析的方法。所提出的方法可以分析和识别恶意软件应用程序权限。在这里,作者通过分析M0Droid数据集上提出的方法,并使用来自Androzoo数据集的恶意软件和来自Drebin数据集的良性应用程序对广泛的测试集进行了测试,从而获得了较高的准确性和改进的F度量。

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