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高速网络环境下的P2P流媒体业务分析和识别方法
引用本文:陈陆颖,丛蓉,杨洁,于华.高速网络环境下的P2P流媒体业务分析和识别方法[J].中国通信学报,2011,8(5):70-78.
作者姓名:陈陆颖  丛蓉  杨洁  于华
基金项目:supported by State Key Program of National Natural Science Foundation of China under Grant No.61072061; 111 Project of China under Grant No.B08004; the Fundamental Research Funds for the Central Universities under Grant No.2009RC0122
摘    要:The growing P2P streaming traffic brings a variety of problems and challenges to ISP networks and service providers.A P2P streaming traffic classification method based on sampling technology is presented in this paper.By analyzing traffic statistical features and network behavior of P2P streaming,a group of flow characteristics were found,which can make P2P streaming more recognizable among other applications.Attributes from Netflow and those proposed by us are compared in terms of classification accuracy,a...

收稿时间:2011-10-27;

P2P Streaming Traffic Classification in High-Speed Networks
Chen Luying,Cong Rong,Yang Jie,Yu Hua.P2P Streaming Traffic Classification in High-Speed Networks[J].China communications magazine,2011,8(5):70-78.
Authors:Chen Luying  Cong Rong  Yang Jie  Yu Hua
Affiliation:School of Information and Communication Engineering,Beijing University of Posts and Telecommunications,Beijing 100876,P.R.China
Abstract:The growing P2P streaming traffic brings a variety of problems and challenges to ISP networks and service providers. A P2P streaming traffic classification method based on sampling technology is presented in this paper. By analyzing traffic statistical features and network behavior of P2P streaming, a group of flow characteristics were found, which can make P2P streaming more recognizable among other applications. Attributes from Netflow and those proposed by us are compared in terms of classification accuracy, and so are the results of different sampling rates. It is proved that the unified classification model with the proposed attributes can identify P2P streaming quickly and efficiently in the online system. Even with 1:50 sampling rate, the recognition accuracy can be higher than 94%. Moreover, we have evaluated the CPU resources, storage capacity and time consumption before and after the sampling, it is shown that the classification model after the sampling can significantly reduce the resource requirements with the same recognition accuracy.
Keywords:traffic classification  machine learning  P2P streaming  packet sampling  deep flow inspection
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