机器学习算法在超文本传输协议分布式拒绝服务入侵检测中的性能评估

Rukayya Umar, M. Olalere, I. Idris, Raji Abdullahi Egigogo, G. Bolarin
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引用次数: 1

摘要

正如本文所阐述的那样,针对DDoS攻击的技术在很大程度上借鉴了已经经过测试的传统技术。然而,没有任何技术被证明是完美的全面检测和预防DDoS攻击。采用机器学习方法的入侵检测系统(IDS)是对抗有害攻击的实现方案之一。然而,如何以最小的假阳性率实现高检测精度仍然是一个需要解决的问题。因此,本研究在HTTP DDoS攻击数据集上对Random forest J48、Naïve Bayes、IBK和Multilayer perception等多种机器学习算法进行了实验评估。该数据集共有17512个实例,分别构成正常攻击(10256)和HTTP DDoS攻击(7256),共有21个特征。实现的性能评估表明,随机森林算法的准确率为99.94%,假阳性率最低为0.001%。
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Performance Evaluation of Machine Learning Algorithms for Hypertext Transfer Protocol Distributed Denial of Service Intrusion Detection
As this paper has expounded, the techniques against DDoS attacks borrow greatly from the already tested traditional techniques. However, no technique has proven to be perfect towards the full detection and prevention of DDoS attacks. Intrusion detection system (IDS) using machine learning approach is one of the implemented solutions against harmful attacks. However, achieving high detection accuracy with minimum false positive rate remains issue that still need to be addressed. Consequently, this study carried out an experimental evaluation on various machine learning algorithms such as Random forest J48, Naïve Bayes, IBK and Multilayer perception on HTTP DDoS attack dataset. The dataset has a total number of 17512 instances which constituted normal (10256) and HTTP DDoS (7256) attack with 21 features. The implemented Performance evaluation revealed that Random Forest algorithm performed best with an accuracy of 99.94% and minimum false positive rate of 0.001%.
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