基于嵌入和深度自编码器的未知流量识别

Shuyuan Zhao, Yongzheng Zhang, Yafei Sang
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引用次数: 13

摘要

流量分类作为网络管理和安全的基本工具,面临着“未知流量”这一关键问题。在流量分类系统中,未知流量是指由以前未知的应用程序(即零日应用程序)产生的网络流量。将混合的未知流量划分为集群的能力是解决这个问题的关键,每个集群尽可能只包含一个应用程序流量。本文报告了我们最近对n图嵌入策略,深度神经网络和聚类算法的探索,用于构建未知网络流量识别的无监督方案。实验结果表明,当我们使用DNS、DHCP、BitTorrent、SSH、HTTP、IMAP、MySQL和Github模拟未知流量时,我们的方法获得了97.35%的平均聚类纯度。
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Towards Unknown Traffic Identification via Embeddings and Deep Autoencoders
Traffic classification, as a fundamental tool for network management and security, is suffering from a critical problem, namely “unknown traffic”. The unknown traffic is defined as network traffic generated by previously unknown applications (i.e., zero-day applications) in a traffic classification system. The ability to divide the mixed unknown traffic into clusters, each of which contains only one application traffic as far as possible, is the key to solve this problem. This paper reports our recent exploration of the n-gram embeddings strategy, deep neural networks and clustering algorithms for constructing an unsupervised scheme for unknown network traffic identification. Experimental results on real-world traces demonstrate that our method gains average clustering purity rate about 97.35% when we use DNS, DHCP, BitTorrent, SSH, HTTP, IMAP, MySQL, and Github to simulate unknown traffic.
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