AppHunter:移动应用流量分类

Mayank Swarnkar, N. Hubballi, Nikhil Tripathi, M. Conti
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引用次数: 2

摘要

流分类在服务质量(QoS)和安全监控等各种服务的实现中得到了应用。在今天的网络中,很大一部分流量是由移动应用程序产生的。因此,需要一种鲁棒、准确的移动应用流量分类技术。本文提出了一种基于深度包检测(Deep Packet Inspection, DPI)的移动应用分类技术AppHunter。与以前已知的移动应用程序分类技术不同,AppHunter是一种无监督的方法,不需要使用为每个应用程序明确收集的流进行训练。AppHunter从流的HTTP/HTTPS头中提取所需字段,并将它们与从Google Playstore中提取的应用程序详细信息进行比较。我们使用两个公开可用的数据集和一个通过在我们的测试平台设置中模拟数千个应用程序生成的数据集来测试AppHunter的分类性能,并报告结果。我们还展示了AppHunter的一个应用,使用它的规则进行网络流量过滤和整形。
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AppHunter: Mobile Application Traffic Classification
Traffic classification finds its application in the implementation of various services like Quality of Service (QoS) and security monitoring. In today’s networks, a significant portion of traffic is generated from mobile applications. Thus, a robust and accurate mobile application traffic classification technique is needed. In this paper, we propose AppHunter, a mobile application classification technique to classify Android applications using Deep Packet Inspection (DPI). Unlike previously known mobile application classification techniques, AppHunter is an unsupervised approach and does not require training with flows explicitly collected for each application. AppHunter extracts required fields from HTTP/HTTPS header of a flow and compares them with application details extracted from Google Playstore. We test the classification performance of AppHunter with two publicly available datasets and one dataset generated by simulating more than thousand applications in our testbed setup and report the results. We also show an application of AppHunter by using its rules for network traffic filtering and shaping.
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