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Critical review of machine learning approaches to apply big data analytics in DDoS forensics

机译:对在DDoS取证中应用大数据分析的机器学习方法的严格审查

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Distributed Denial of Service (DDoS) attacks are becoming more frequent and easier to execute. The sharp increase in network traffic presents challenges to conduct DDoS forensics. Despite different tools being developed, few take into account of the increase in network traffic. This research aims to recommend the best learning model for DDoS forensics. To this extend, the paper reviewed different literature to understand the challenges and opportunities of employing big data in DDoS forensics. Multiple simulations were carried out to compare the performance of different models. Two data mining tools WEKA and H2O were used to implement both supervised and unsupervised learning models. The training and testing of the models made use of intrusion dataset from oN-Line System - Knowledge Discovery & Data mining (NSL-KDD). The models are then evaluated according to their efficiency and accuracy. Overall, result shows that supervised learning algorithms perform better than unsupervised learning algorithms. It was found that Naïve Bayes, Gradient Boosting Machine and Distributed Random Forest are the most suitable model for DDoS detection because of its accuracy and time taken to train. Both Gradient Boosting Machine and Distributed Random Forest were further investigated to determine the parameters that can yield better accuracy. Future research can be extended by installing different DDoS detection models in an actual environment and compare their performances in actual attacks.
机译:分布式拒绝服务(DDoS)攻击变得越来越频繁且更易于执行。网络流量的急剧增加为进行DDoS取证提供了挑战。尽管开发了不同的工具,但很少有人考虑网络流量的增加。这项研究旨在为DDoS取证推荐最佳的学习模型。为此,本文回顾了不同的文献,以了解在DDoS取证中使用大数据的挑战和机遇。进行了多次仿真以比较不同模型的性能。使用了两个数据挖掘工具WEKA和H2O来实现有监督和无监督的学习模型。使用来自oN-Line系统-知识发现和数据挖掘(NSL-KDD)的入侵数据集对模型进行训练和测试。然后根据模型的效率和准确性对其进行评估。总体而言,结果表明,监督学习算法的性能要优于非监督学习算法。结果发现,朴素贝叶斯,梯度提升机和分布式随机森林是DDoS检测的最合适模型,因为它的准确性和训练时间。进一步研究了梯度提升机和分布式随机森林,以确定可以产生更高准确度的参数。通过在实际环境中安装不同的DDoS检测模型并比较其在实际攻击中的性能,可以扩展未来的研究。

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