A Review of Deep Learning Techniques for Encrypted Traffic Classification

A. Iliyasu, I. Abba, Badariyya Sani Iliyasu, A. Muhammad
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Abstract

Network traffic classification is significant for task such as Quality of Services (QoS) provisioning, resource usage planning, pricing as well as in the context of security such as in Intrusion detection systems. The field has received considerable attention in the industry as well as research communities where approaches such as Port based, Deep packet Inspection (DPI), and Classical machine learning techniques were thoroughly studied. However, the emergence of new applications and encryption protocols as a result of continuous transformation of Internet has led to the rise of new challenges. Recently, researchers have employed deep learning techniques in the domain of network traffic classification in order to leverage the inherent advantages offered by deep learning models such as the ability to capture complex pattern as well as automatic feature learning. This paper reviews deep learning based encrypted traffic classification techniques, as well as highlights the current research gap in the literature. Index Terms : Traffic classification, Encrypted traffic, Deep learning, Machine learning.
加密流量分类的深度学习技术综述
网络流量分类对于服务质量(QoS)提供、资源使用规划、定价等任务以及入侵检测系统等安全环境都具有重要意义。该领域在工业界和研究界受到了相当大的关注,其中对基于端口的方法、深度包检测(DPI)和经典机器学习技术进行了深入研究。然而,随着互联网的不断转型,新的应用和加密协议的出现也带来了新的挑战。最近,研究人员在网络流量分类领域采用了深度学习技术,以利用深度学习模型提供的固有优势,如捕获复杂模式的能力以及自动特征学习。本文综述了基于深度学习的加密流量分类技术,并强调了目前文献中研究的空白。索引术语:流量分类,加密流量,深度学习,机器学习。
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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