P2P flow classification based on wavelet transform

Xiaohan Du, Xiangqin Ou
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引用次数: 3

Abstract

P2P (Peer-to-Peer) flow classification is very meaningful for network management, performance analysis, quality of service (QoS) melioration, and so on, since P2P applications occupy most traffic of current Internet. Machine learning classification methods have attracted wide attention because of high classification accuracy, and the capability of classifying unknown P2P traffic. Existing machine learning methods mainly use the time domain characters of flows to classify P2P traffic. Experiment results show that this kind of methods has high classification accuracy if the training data and test data are captured from the same network environment. Otherwise, the classification accuracy bears great instability. The main reason is that some time domain characters of flows are instable and sensitive with the change of network environment. To improve the stability of machine learning classification methods, in this paper we carry out a framework of time domain and frequency domain characters based machine learning classification method. In addition to the existing time domain characters, we adopt wavelet transform based frequency domain characters of flows to machine learning classification method. Experiment results show that the proposed framework is sufficiently stable no matter the training data and test data are captured from the same network environment or not.
基于小波变换的P2P流分类
P2P (Peer-to-Peer)流量分类对于网络管理、性能分析、服务质量(QoS)改善等都具有重要意义,因为P2P应用占据了当前互联网的大部分流量。机器学习分类方法以其较高的分类精度和对未知P2P流量的分类能力而受到广泛关注。现有的机器学习方法主要是利用流的时域特征对P2P流量进行分类。实验结果表明,当训练数据和测试数据来自同一网络环境时,该方法具有较高的分类准确率。否则,分类精度具有很大的不稳定性。其主要原因是流的一些时域特征随着网络环境的变化而变得不稳定和敏感。为了提高机器学习分类方法的稳定性,本文提出了一种基于时域和频域特征的机器学习分类方法框架。在现有的时域特征基础上,采用基于小波变换的流频域特征进行机器学习分类。实验结果表明,无论训练数据和测试数据是否来自同一网络环境,所提框架都具有足够的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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