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Discovering communities of malapps on Android-based mobile cyber-physical systems

机译:在基于Android的移动网络物理系统上发现恶意应用程序社区

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摘要

Android-based devices like smartphones have become ideal mobile cyber-physical systems (MCPS) due to their powerful processors and variety of sensors. In recent years, an explosively and continuously growing number of malicious applications (malapps) have posed a great threat to Android-based MCPS as well as users' privacy. The effective detection of malapps is an emerging yet crucial task. How to establish relationships among malapps, discover their potential communities, and explore their evolution process has become a challenging issue in effective detection of malapps. To deal with this issue, in this work, we are motivated to propose an automated community detection method for Android malapps by building a relation graph based on their static features. First, we construct a large feature set to profile the behaviors of malapps. Second, we propose an E-N algorithm for graph construction by combining epsilon graph and k-nearest neighbor (k-NN) graph. It solves the problem of an incomplete graph led by epsilon method and the problem of noise generated by k-NN graph. Finally, a community detection method, Infomap, is employed to explore the underlying structures of the relation graph, and obtain the communities of malapps. We evaluate our community detection method with 3996 malapp samples. Extensive experimental results show that our method outperforms the traditional clustering methods and achieves the best performance with rand statistic of 94.93% and accuracy of 79.53%. (C) 2018 Elsevier B.V. All rights reserved.
机译:智能手机等基于Android的设备由于其强大的处理器和各种传感器而成为理想的移动网络物理系统(MCPS)。近年来,爆炸性且持续增长的恶意应用程序(malapps)对基于Android的MCPS以及用户的隐私构成了巨大威胁。有效检测恶意软件是一项新兴但至关重要的任务。如何在恶意软件之间建立关系,发现它们的潜在社区并探索其进化过程,已成为有效检测恶意软件的难题。为了解决这个问题,在这项工作中,我们有动机通过基于Android恶意应用程序的静态功能构建关系图来为其提出一种自动社区检测方法。首先,我们构造一个大型功能集来分析恶意软件的行为。其次,我们通过结合epsilon图和k最近邻(k-NN)图,提出了一种E-N算法,用于图的构建。解决了由ε法导致图不完整的问题和由k-NN图产生的噪声的问题。最后,使用社区检测方法Infomap来探索关系图的基础结构,并获得恶意应用程序的社区。我们使用3996个malapp样本评估了我们的社区检测方法。大量的实验结果表明,我们的方法优于传统的聚类方法,并以94.93%的随机统计和79.53%的准确率获得了最佳性能。 (C)2018 Elsevier B.V.保留所有权利。

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