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Detecting Malicious DNS over HTTPS Traffic in Domain Name System using Machine Learning Classifiers

机译:使用机器学习分类器检测域名系统中的HTTPS流量的恶意DNS

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This paper presents a systematic two-layer approach for detecting DNS over HTTPS (DoH) traffic and distinguishing Benign-DoH traffic from Malicious-DoH traffic using six machine learning algorithms. The capability of machine learning classifiers is evaluated considering their accuracy, precision, recall, and F-score, confusion matrices, ROC curves, and feature importance. The results show that LGBM and XGBoost algorithms outperform the other algorithms in almost all the classification metrics reaching the maximum accuracy of 100% in the classification tasks of layers 1 and 2. LGBM algorithms only misclassified one DoH traffic test as non-DoH out of 4000 test datasets. It has also found that out of 34 features extracted from the CIRA-CIC-DoHBrw-2020 dataset, SourceIP is the critical feature for classifying DoH traffic from non-DoH traffic in layer one followed by DestinationIP feature. However, only DestinationIP is an important feature for LGBM and gradient boosting algorithms when classifying Benign-DoH from Malicious-DoH traffic in layer 2.
机译:本文介绍了一种系统的双层方法,用于通过六种机器学习算法检测HTTPS(DOH)流量的DNS(DOH)流量,并使用六个机器学习算法区分良性DOH流量。考虑到其准确性,精度,召回和F分,混淆矩阵,ROC曲线和特征重要性,评估机器学习分类器的能力。结果表明,LGBM和XGBoost算法几乎所有分类指标都优于其他算法,几乎所有分类指标都达到了图层1和2的分类任务中的最大精度100%.LGBM算法仅将一个DOH流量测试错误分类为4000中的非DOH测试数据集。它还发现,在CiC-CIC-Dohbrw-2020数据集中提取的34个功能中,SourceIP是用于对DestentTyIP特征的层中非DOH流量分类DOH流量的关键特征。但是,只有DestanceIP是LGBM和渐变促进算法的重要特征,当在第2层中的恶意DOH流量归类时良性DOH。

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