在不同高速网络上使用机器学习技术评估应用层分类

S. Ubik, P. Zejdl
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引用次数: 23

摘要

在许多监控应用中都需要进行应用层分类。基于机器学习的分类为基于端口或基于有效负载的技术提供了一种替代方法。它基于从网络流中计算出的统计特征。一些作品研究了机器学习技术的效率,并找到了适合网络分类的算法。基于机器学习的分类器是通过学习由已知应用程序跟踪数据组成的训练数据集来构建的。在本文中,我们评估了基于C4.5~机器学习算法的应用层分类效率,用于分类来自不同高速网络(如100~Mbit、1~Gbit和10~Gbit网络)的网络流。我们发现,当为一个网络构建的分类器用于分类其他网络时,分类效率会显著降低。我们建议从从所有可用网络收集的数据中构建分类器,以获得最佳结果。然而,如果没有不同的网络,从数据跟踪到商品互联网可以获得很好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Application-Layer Classification Using a Machine Learning Technique over Different High Speed Networks
Application–layer classification is needed in many monitoring applications. Classification based on machine learning offers an alternative method to methods based on port or payload based techniques. It is based on statistical features computed from network flows. Several works investigated the efficiency of machine learning techniques and found algorithms suitable for network classification. A classifier based on machine learning is built by learning from a training data set that consists of data from known application traces. In this paper, we evaluate the efficiency of application-layer classification based on C4.5~machine learning algorithm used for classification network flows from different high speed networks, such as 100~Mbit, 1~Gbit and 10~Gbit networks. We find a significant decrease in the classification efficiency when classifier built for one network is used to classify other network. We recommend to build classifier from data collected from all available networks for best results. However, if different networks are not available, good results can be obtained from data traces to the commodity Internet.
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