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Automatic Classification of Network Traffic Data based on Deep Learning in ONOS Platform

机译:基于深度学习的网络流量数据自动分类

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Machine learning has been deployed in networks for automatically analyzing network data, proactively monitoring network dynamics, and predicting network resource availability. This becomes one of key technologies for efficient and autonomous network management in particular for software defined networks (SDN) environments. Especially, deep learning has brought recent breakthrough in machine learning algorithm as it can extract features based on artificial neural networks from data. In this paper, we study the deployment of deep neural network (DNN) for network traffic data classification, where DNN is deployed to automatically classify real network traffic data collected from ONOS (Open Network Operating System) platform. From the experiment results with simple network topologies, we conclude that DNN can be a potential approach to effective network packet classification. Moreover, it is confirmed that a deployment of DNN for a real network traffic data classification should consider not only the data packets that are intended to be delivered but also data packets required to maintain networks, as the classification performance of DNN significantly depends on the network traffic data.
机译:机器学习已在网络中部署,用于自动分析网络数据,主动监控网络动态和预测网络资源可用性。这成为高效和自主网络管理的关键技术之一,特别是对于软件定义的网络(SDN)环境。特别是,深度学习在机器学习算法中提出了最近的突破,因为它可以基于来自数据的人工神经网络提取特征。在本文中,我们研究了网络流量数据分类的深神经网络(DNN)的部署,其中DNN部署以自动对从ONO(开放网络操作系统)平台收集的真实网络流量数据进行分类。通过简单的网络拓扑实验结果,我们得出结论,DNN可以是有效网络分组分类的潜在方法。此外,确认,用于真实网络流量数据分类的DNN部署不仅应考虑旨在传送的数据分组,而且考虑维护网络所需的数据分组,因为DNN的分类性能显着取决于网络交通数据。

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