基于自监督学习的SDN加密网络流量分类

Md. Shamim Towhid, Nashid Shahriar
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引用次数: 1

摘要

网络流量分类在软件定义网络(SDN)中有着巨大的应用,我们谈论对网络流量的更多控制。随着网络中加密协议的增多,流分类问题变得非常具有挑战性。许多研究人员提出了不同的流量分类技术。本文演示了我们提出的流量分类方法在SDN环境中的应用。该方法利用一种自监督学习方法(深度学习的新兴领域)对网络流量进行分类。本文使用从SDN试验台收集的数据表明,所提出的方法在精度方面优于相应的监督方法2 %。此外,开发了一个SDN应用程序,表明训练后的模型能够对实时流量进行分类。
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Encrypted Network Traffic Classification in SDN using Self-supervised Learning
Network traffic classification has a huge application in software-defined networking (SDN) where we talk about more control over the network traffic. With the increase of encrypted protocols in the network, the problem of traffic classification has become extremely challenging. Many researchers have proposed different techniques to do traffic classification. This demo paper presents an application of our proposed method for traffic classification in an SDN environment. The proposed method leverages one of the self-supervised learning approaches, an emerging field of deep learning, to classify network traffic. This paper shows that the proposed method can outperform the corresponding supervised approach by $\sim 2$% in terms of accuracy using data collected from an SDN testbed. Furthermore, an SDN application is developed to show that the trained model is able to classify real-time traffic.
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