Network Traffic Classification in an NFV Environment using Supervised ML Algorithms

G. Ilievski, P. Latkoski
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引用次数: 1

Abstract

We have conducted research on the performance of six supervised machine learning (ML) algorithms used for network traffic classification in a virtual environment driven by network function virtualization (NFV). The performancerelated analysis focused on the precision of the classification process, but also in time-intensity (speed) of the supervised ML algorithms. We devised specific traffic taxonomy using commonly used categories, with particular emphasis placed on VoIP and encrypted VoIP protocols serve as a basis of the 5G architecture. NFV is considered to be one of the foundations of 5G development, as the traditional networking components are fully virtualized, in many cases relaying on mixed cloud solutions, both of the premiseand public cloud-based variety. Virtual machines are being replaced by containers and application functions while most of the network traffic is flowing in the east-west direction within the cloud. The analysis performed has shown that in such an environment, the Decision Tree algorithm is best suited, among the six algorithms considered, for performing classification-related tasks, and offers the required speed that will introduce minimal delays in network flows, which is crucial in 5G networks, where packet delay requirements are of great significance. It has proven to be reliable and offered excellent overall performance across multiple network packet classes within a virtualized NFV network architecture. While performing the classification procedure, we were working only with the statistical network flow features, leaving out packet payload, source, destinationand port-related information, thus making the analysis valid not only from the technical, but also from the regulatory point of view. Keywords—classification, machine learning, network functions virtualization, network traffic.
NFV环境中使用监督ML算法的网络流量分类
我们对网络功能虚拟化(NFV)驱动的虚拟环境中用于网络流量分类的六种监督机器学习(ML)算法的性能进行了研究。与性能相关的分析侧重于分类过程的精度,以及监督机器学习算法的时间强度(速度)。我们使用常用的类别设计了特定的流量分类,特别强调VoIP和加密VoIP协议作为5G架构的基础。NFV被认为是5G发展的基础之一,因为传统的网络组件是完全虚拟化的,在许多情况下依赖于混合云解决方案,包括内部和基于公共云的各种。虚拟机正在被容器和应用程序功能所取代,而大多数网络流量在云中以东西方向流动。所进行的分析表明,在这种环境下,在所考虑的六种算法中,决策树算法最适合执行与分类相关的任务,并提供所需的速度,将在网络流中引入最小的延迟,这在5G网络中至关重要,其中数据包延迟要求非常重要。它已被证明是可靠的,并且在虚拟化NFV网络体系结构中跨多个网络数据包类提供了出色的整体性能。在执行分类程序时,我们只处理统计网络流特征,而不考虑数据包有效载荷、源、目的和端口相关信息,从而使分析不仅从技术角度有效,而且从监管角度有效。关键词:分类,机器学习,网络功能虚拟化,网络流量。
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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