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Semi-supervised machine learning approach for DDoS detection

机译:DDOS检测的半监控机器学习方法

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摘要

Even though advanced Machine Learning (ML) techniques have been adopted for DDoS detection, the attack remains a major threat of the Internet. Most of the existing ML-based DDoS detection approaches are under two categories: supervised and unsupervised. Supervised ML approaches for DDoS detection rely on availability of labeled network traffic datasets. Whereas, unsupervised ML approaches detect attacks by analyzing the incoming network traffic. Both approaches are challenged by large amount of network traffic data, low detection accuracy and high false positive rates. In this paper we present an online sequential semi-supervised ML approach for DDoS detection based on network Entropy estimation, Co-clustering, Information Gain Ratio and Exra-Trees algorithm. The unsupervised part of the approach allows to reduce the irrelevant normal traffic data for DDoS detection which allows to reduce false positive rates and increase accuracy. Whereas, the supervised part allows to reduce the false positive rates of the unsupervised part and to accurately classify the DDoS traffic. Various experiments were performed to evaluate the proposed approach using three public datasets namely NSL-KDD, UNB ISCX 12 and UNSW-NB15. An accuracy of 98.23%, 99.88% and 93.71% is achieved for respectively NSL-KDD, UNB ISCX 12 and UNSW-NB15 datasets, with respectively the false positive rates 0.33%, 0.35% and 0.46%.
机译:尽管采用了DDOS检测的先进机器学习(ML)技术,但攻击仍然是互联网的主要威胁。大多数现有的基于ML的DDOS检测方法都有两类:监督和无人监督。 DDOS检测的监督ML方法依赖于标记的网络流量数据集的可用性。虽然,无监督的ML方法通过分析传入的网络流量来检测攻击。两种方法都受到大量网络流量数据,低检测精度和高误阳性率的挑战。在本文中,我们在网络熵估计,共聚类,信息增益比和以非法树木算法基于网络序列检测的在线顺序半监督ML方法。该方法的无监督部分允许减少DDOS检测的无关正常交通数据,这允许降低假阳性率并提高精度。虽然,监督部件允许降低无监督部分的假阳性率,并准确地分类DDOS流量。进行各种实验以评估使用三个公共数据集即NSL-KDD,UNB ISCX 12和UNSW-NB15的所提出的方法。对于分别的NSL-KDD,UNB ISCX 12和UNSW-NB15数据集,可以获得98.23%,99.88%和93.71%的精度,分别为0.33%,0.35%和0.46%的假阳性率。

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