vTC: Machine Learning Based Traffic Classification as a Virtual Network Function

Lu He, Chen Xu, Yan Luo
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引用次数: 30

Abstract

Network flow classification is fundamental to network management and network security. However, it is challenging to classify network flows at very high line rates while simultaneously preserving user privacy. Machine learning based classification techniques utilize only meta-information of a flow and have been shown to be effective in identifying network flows. We analyze a group of widely used machine learning classifiers, and observe that the effectiveness of different classification models depends highly upon the protocol types as well as the flow features collected from network data.We propose vTC, a design of virtual network functions to flexibly select and apply the best suitable machine learning classifiers at run time. The experimental results show that the proposed NFV for flow classification can improve the accuracy of classification by up to 13%.
基于机器学习的流量分类作为虚拟网络功能
网络流分类是网络管理和网络安全的基础。然而,在保持用户隐私的同时,以非常高的线路速率对网络流进行分类是具有挑战性的。基于机器学习的分类技术仅利用流的元信息,并且已被证明在识别网络流方面是有效的。我们分析了一组广泛使用的机器学习分类器,并观察到不同分类模型的有效性在很大程度上取决于协议类型以及从网络数据中收集的流特征。为了在运行时灵活地选择和应用最适合的机器学习分类器,我们提出了虚拟网络函数的vTC设计。实验结果表明,该方法可将流量分类的准确率提高13%。
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