计算机科学
交通分类
人工智能
机器学习
随机森林
二元分类
多类分类
分类器(UML)
互联网
统计分类
网络数据包
数据挖掘
支持向量机
计算机网络
万维网
作者
Lazaros Alexios Iliadis,Theodorοs N. Kaifas
标识
DOI:10.1109/mocast52088.2021.9493386
摘要
A Darknet is an overlay network within the Internet, and packets' traffic originating from it is usually termed as suspicious. In this paper common machine learning classification algorithms are employed to identify Darknet traffic. A ROC analysis along with a feature importance analysis for the best classifier was performed, to provide a better visualisation of the results. The experiments were conducted in the new dataset CIC-Darknet2020 and the classifiers were trained to both binary and multiclass classification. In the first classification task, there were two classes: "Benign" and "Darknet", whereas in the second there were four classes: "Tor", "Non Tor", "VPN" and "Non VPN". An average prediction accuracy of over 98% was achieved with the implementation of Random Forest algorithm for both classification tasks. This is the first work, to the best of our knowledge providing a comprehensive performance evaluation of machine learning classifiers employed for Darknet traffic classification in the new dataset CIC-Darknet2020.
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