Enhancing Multi-Class DDoS Attack Classification using Machine Learning Techniques

Mohammad Jawad Kadhim Abood, Ghassan Hameed Abdul-Majeed
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Abstract

Distributed Denial of Service (DDoS) attacks, which adversely impact network availability, confidentiality, and integrity, represent a persistent threat. These attacks involve affected systems consuming resources through spurious requests instead of serving legitimate clients. Various methodologies exist for detecting and mitigating DDoS attacks, with Machine Learning (ML) emerging as a particularly effective approach due to its predictive capabilities after training on pertinent data. The primary objective of this study is to identify an improved ML algorithm for the detection of multiple DDoS types, considering metrics such as accuracy, precision, recall, and training time. Leveraging WEKA tools and the CICDDoS2019 dataset, several machine-learning algorithms, including Multilayer Perceptron, Reduced Error Pruning (REP) Tree, Partial Decision Tree (PART), RandomForest, and J48, were trained and evaluated. Among these, J48 was determined to be the superior algorithm for classifying four DDoS types (UDP, SYN, Portmap, MSSQL), based on the aforementioned criteria. The algorithms were experimented with using diverse sets of features, and optimal results were obtained using six features, resulting in an overall accuracy of 99.97%. Subsequently, the selected algorithm was integrated into a real-time model, exhibiting exceptional performance, which will be thoroughly elucidated and discussed in a forthcoming paper.
利用机器学习技术加强多类 DDoS 攻击分类
分布式拒绝服务(DDoS)攻击会对网络的可用性、保密性和完整性造成负面影响,是一种持续存在的威胁。这些攻击涉及受影响的系统通过虚假请求消耗资源,而不是为合法客户提供服务。目前有多种方法可用于检测和缓解 DDoS 攻击,其中机器学习(ML)是一种特别有效的方法,因为它在对相关数据进行训练后具有预测能力。本研究的主要目的是确定一种用于检测多种 DDoS 类型的改进型 ML 算法,同时考虑准确率、精确度、召回率和训练时间等指标。利用 WEKA 工具和 CICDDoS2019 数据集,训练并评估了几种机器学习算法,包括多层感知器、减误剪枝(REP)树、部分决策树(PART)、RandomForest 和 J48。其中,根据上述标准,J48 被认为是对四种 DDoS 类型(UDP、SYN、Portmap、MSSQL)进行分类的最佳算法。使用不同的特征集对算法进行了实验,使用六个特征获得了最佳结果,总体准确率达到 99.97%。随后,选定的算法被集成到一个实时模型中,表现出卓越的性能,我们将在即将发表的论文中对此进行深入阐释和讨论。
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CiteScore
1.30
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