基于远端子网分组的应用流量识别

J. Chung, Jian Li, Yeongrak Choi, J. W. Hong
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引用次数: 3

摘要

最近,可供台式电脑和智能手机使用的互联网应用程序的数量迅速增加。这些应用程序产生的互联网流量也显著增加。网络运营商需要了解所管理网络在应用程序使用方面的状况。然而,在网络中观察到的应用程序流量依赖于用户和网络的地理位置。因此,需要选择预期在网络中频繁出现的应用,作为生成地面真实流量和提取分类器的第一步。在本文中,我们提出了一种流量识别方法,用于分类器生成过程的初始步骤。该方法基于远程子网分组,远程子网分组指的是相同(或类似)应用程序流量的集合。并以校园网为例,验证了该方法的完整性、可行性和准确性。
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Application traffic identification based on remote subnet grouping
Recently, the number of Internet applications available for use on both desktop computers and smartphones has rapidly increased. The Internet traffic generated by these applications has increased significantly as well. Network operators are required to be aware of the status of managed networks in terms of application usage. However, the application traffic observed in a network is dependent on users and the geographical location of the network. As a result, selecting applications that are expected to appear frequently in the network is required as the initial step in the generation of ground-truth traffic and extraction of classifiers. In this paper, we propose a traffic identification methodology for the initial step of the classifier generation procedure. The proposed approach is based on remote subnet grouping, which refers to the collection of the same (or similar) application traffic. We also validate the proposed methodology in terms of completeness, feasibility, and accuracy by using the traffic in a campus network.
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