基于卷积神经网络的原始包头流量分类

Minsu Kim, A. Anpalagan
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引用次数: 24

摘要

随着网络流量呈指数级增长,流量分析与分类对于有效的资源分配和网络管理起着重要的作用。然而,随着新兴的安全技术的出现,这项工作变得越来越困难,比如最流行的加密技术之一Tor加密通信。本文提出了一种利用十六进制原始包头和卷积神经网络模型对Tor流量进行分类的方法。与竞争对手的机器学习算法相比,我们的方法显示出惊人的准确性。为了公开验证该方法,我们使用了UNB-CIC网络流量数据集。基于实验,我们的方法对分割的Tor/非Tor流量分类准确率达到99.3%。
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Tor Traffic Classification from Raw Packet Header using Convolutional Neural Network
As the amount of network traffic is growing exponentially, traffic analysis and classification are playing a significant role for efficient resource allocation and network management. However, with emerging security technologies, this work is becoming more difficult by encrypted communication such as Tor, which is one of the most popular encryption techniques. This paper proposes an approach to classify Tor traffic using hexadecimal raw packet header and convolutional neural network model. Comparing with competitive machine learning algorithms, our approach shows a remarkable accuracy. To validate this method publicly, we use UNB-CIC Tor network traffic dataset. Based on the experiments, our approach shows 99.3% accuracy for the fractionized Tor/non-Tor traffic classification.
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