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DeDroid: A Mobile Botnet Detection Approach Based on Static Analysis

机译:DeDroid:一种基于静态分析的移动僵尸网络检测方法

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Mobile botnet phenomenon is gaining popularity among malware writers in order to exploit vulnerabilities in smartphones. In particular, mobile botnets enable illegal access to a victim's smartphone and can compromise critical user data and launch a DDoS attack through Command and Control (C&C). In this paper, we propose a static analysis approach called DeDroid, to investigate botnet-specific properties that can be used to detect mobile botnets. Initially, we identify critical features by observing coding behavior of the few known malware binaries having C&C features. Then we compare the identified features with the Drebin dataset of malicious applications and come to the conclusion that Drebin dataset has 35 percent applications which qualify as botnets. To confirm this result, we used Virus Total as a reference point which also showed comparable results of botnet detection.
机译:为了利用智能手机中的漏洞,移动僵尸网络现象在恶意软件编写者中越来越流行。特别是,移动僵尸网络使非法访问受害人的智能手机成为可能,并可能危及关键用户数据并通过命令与控制(C&C)发起DDoS攻击。在本文中,我们提出了一种称为DeDroid的静态分析方法,以研究可用于检测移动僵尸网络的特定于僵尸网络的属性。最初,我们通过观察几种具有C&C功能的已知恶意软件二进制文件的编码行为来识别关键功能。然后,我们将识别出的特征与恶意应用程序的Drebin数据集进行比较,得出的结论是Drebin数据集包含35%的应用程序属于僵尸网络。为了确认该结果,我们使用Virus Total作为参考点,该参考点也显示了可比较的僵尸网络检测结果。

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