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MobSafe: cloud computing based forensic analysis for massive mobile applications using data mining

机译:MobSafe:使用数据挖掘对大型移动应用程序进行基于云计算的取证分析

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With the explosive increase in mobile apps, more and more threats migrate from traditional PC client to mobile device. Compared with traditional Win+Intel alliance in PC, Android+ARM alliance dominates in Mobile Internet, the apps replace the PC client software as the major target of malicious usage. In this paper, to improve the security status of current mobile apps, we propose a methodology to evaluate mobile apps based on cloud computing platform and data mining. We also present a prototype system named MobSafe to identify the mobile app??s virulence or benignancy. Compared with traditional method, such as permission pattern based method, MobSafe combines the dynamic and static analysis methods to comprehensively evaluate an Android app. In the implementation, we adopt Android Security Evaluation Framework (ASEF) and Static Android Analysis Framework (SAAF), the two representative dynamic and static analysis methods, to evaluate the Android apps and estimate the total time needed to evaluate all the apps stored in one mobile app market. Based on the real trace from a commercial mobile app market called AppChina, we can collect the statistics of the number of active Android apps, the average number apps installed in one Android device, and the expanding ratio of mobile apps. As mobile app market serves as the main line of defence against mobile malwares, our evaluation results show that it is practical to use cloud computing platform and data mining to verify all stored apps routinely to filter out malware apps from mobile app markets. As the future work, MobSafe can extensively use machine learning to conduct automotive forensic analysis of mobile apps based on the generated multifaceted data in this stage.
机译:随着移动应用程序的爆炸性增长,越来越多的威胁从传统的PC客户端迁移到移动设备。与PC上的传统Win + Intel联盟相比,Android + ARM联盟在移动Internet中占主导地位,这些应用取代PC客户端软件成为恶意使用的主要目标。在本文中,为了改善当前移动应用程序的安全状态,我们提出了一种基于云计算平台和数据挖掘的评估移动应用程序的方法。我们还提供了一个名为MobSafe的原型系统,用于识别移动应用程序的毒力或良性。与基于权限模式的传统方法相比,MobSafe结合了动态和静态分析方法来全面评估Android应用。在实施过程中,我们采用Android安全评估框架(ASEF)和静态Android分析框架(SAAF)这两种代表性的动态和静态分析方法来评估Android应用程序,并估算评估存储在一个应用程序中的所有应用程序所需的总时间移动应用市场。根据来自名为AppChina的商业移动应用程序市场的真实跟踪,我们可以收集活动的Android应用程序数量,在一台Android设备上安装的平均应用程序数量以及移动应用程序的扩展比率的统计信息。由于移动应用程序市场是抵御移动恶意软件的主要防线,我们的评估结果表明,使用云计算平台和数据挖掘来定期验证所有存储的应用程序以从移动应用程序市场中过滤掉恶意软件应用程序是可行的。作为未来的工作,MobSafe可以在此阶段广泛使用机器学习来基于生成的多方面数据对移动应用进行汽车取证分析。

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