Efficient Malicious Traffic Classification Methods based on Semi-supervised Learning

Xiaoyi Hu, Jin Ning, Jie Yin, Jie Yang, B. Adebisi, H. Gačanin
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引用次数: 1

Abstract

The proliferation of mobile communication systems, arrival of high-speed broadband networks and more complex network topologies have exacerbated cyber-threats. Cyber-warfare has become an aspect of modern war-fare that can no longer be overlooked. In recent years, network intrusions launched using the Internet have seriously undermined the security systems of many nations. Classifying malicious network traffic is the first step in network intrusion detection. In this paper, we propose three models using semi-supervised learning-based malicious traffic classification (MTC) methods that effectively improve the classification of traffic using a small proportion of labeled traffic data. Employing three different deep neural networks as feature extraction networks respectively, the proposed models use transductive transfer learning and domain adaptive ideas, and ladder networks as classification layers. Experimental results are provided to validate the proposed methods.
基于半监督学习的高效恶意流量分类方法
移动通信系统的激增、高速宽带网络的到来以及更复杂的网络拓扑结构加剧了网络威胁。网络战已经成为现代战争不可忽视的一个方面。近年来,利用互联网发起的网络入侵已经严重破坏了许多国家的安全系统。恶意网络流量分类是网络入侵检测的第一步。在本文中,我们提出了三种基于半监督学习的恶意流量分类(MTC)方法的模型,这些方法有效地改进了使用一小部分标记流量数据的流量分类。该模型分别采用三种不同的深度神经网络作为特征提取网络,采用传导迁移学习和领域自适应思想,并采用阶梯网络作为分类层。实验结果验证了所提方法的有效性。
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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