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Mining network traffic for application category recognition on Android platform

机译:挖掘网络流量以在Android平台上识别应用程序类别

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Signature-based static mobile malware detection is fragile when facing code obfuscation and transformation attacks. Behavior based malware detection mechanisms have been widely studied and experimented. So far only the application's running behaviors, such as API calls and resource consumption are used, which can also be easily concealed and obfuscated with various coding tricks. Most mobile malware need either cellular or network connection to conduct their malicious activities. We propose to monitor an application's network behavior and interaction to characterize application behaviors. An integrated testbed system has been designed and prototyped for such network behavior collection. Statistical features are derived from application network traffic, which are further fed to a machine-learning based classifier to build one general model for each typical category of mobile applications. Experiments show that applications in each category with identical functionality exhibit similar network behaviors, which makes it possible to use the derived category model of network behaviors to evaluate future unknown application for its trustworthiness.
机译:当面对代码混淆和转换攻击时,基于签名的静态移动恶意软件检测非常脆弱。基于行为的恶意软件检测机制已得到广泛研究和实验。到目前为止,仅使用了应用程序的运行行为,例如API调用和资源消耗,这些行为也可以通过各种编码技巧轻松地隐藏和混淆。大多数移动恶意软件都需要蜂窝或网络连接来进行其恶意活动。我们建议监视应用程序的网络行为和交互以表征应用程序行为。已经为这种网络行为收集设计了集成的测试平台系统并对其进行了原型设计。统计特征是从应用程序网络流量中得出的,这些特征量又被馈送到基于机器学习的分类器中,从而为每种典型的移动应用程序构建一个通用模型。实验表明,具有相同功能的每个类别中的应用程序都表现出相似的网络行为,这使得可以使用派生的网络行为类别模型来评估未来未知应用程序的可信度。

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