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Online DDoS attack detection using Mahalanobis distance and Kernel-based learning algorithm

机译:使用Mahalanobis距离和基于内核的学习算法的在线DDOS攻击检测

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Distributed denial-of-service (DDoS) attacks are constantly evolving as the computer and networking technologies and attackers' motivations are changing. In recent years, several supervised DDoS detection algorithms have been proposed. However, these algorithms require a priori knowledge of the classes and cannot automatically adapt to frequently changing network traffic trends. This emphasizes the need for the development of new DDoS detection mechanisms that target zero-day and sophisticated DDoS attacks. In this paper, we propose an online, sequential, DDoS detection scheme that is suitable for use with multivariate data. The proposed algorithm utilizes a kernel-based learning algorithm, the Mahalanobis distance, and a chi-square test. Initially, we extract four entropy-based and four statistical features from network flows per minute as detection metrics. Then, we employ the kernel-based learning algorithm using the entropy features to detect input vectors that were suspected to be DDoS. This algorithm assumes no model for network traffic or DDoS. It constructs and adapts a dictionary of features that approximately span the subspace of normal behavior. Every T minutes, the Mahalanobis distance between suspicious vectors and the distribution of dictionary members is measured. Subsequently, the chi-square test is used to evaluate the Mahalanobis distance. The proposed DDoS detection scheme was applied to the CICIDS2017 dataset, and we compared the results with those given by existing algorithms. It was demonstrated that the proposed online detection scheme outperforms almost all available DDoS classification algorithms with an offline learning process.
机译:随着计算机和网络技术和攻击者的动机正在发生变化,分布式拒绝服务(DDOS)攻击不断发展。近年来,已经提出了几个受监督的DDOS检测算法。但是,这些算法需要先验的类知识,并且不能自动适应经常改变网络流量趋势。这强调需要开发目标零日和复杂的DDOS攻击的新DDOS检测机制。在本文中,我们提出了一个适合与多变量数据一起使用的在线,顺序,DDOS检测方案。所提出的算法利用基于内核的学习算法,Mahalanobis距离和Chi-Square测试。最初,我们从每分钟网络流程中提取四个基于熵的和四个统计特征作为检测指标。然后,我们使用基于内核的学习算法使用熵特征来检测被怀疑是DDOS的输入向量。该算法假设网络流量或DDO的模型。它构建并突破了大致跨越正常行为的子空间的特征词典。每T分钟,测量可疑向量之间的Mahalanobis距离和字典成员的分布。随后,Chi-Square测试用于评估Mahalanobis距离。所提出的DDOS检测方案应用于Cicids2017数据集,我们将结果与现有算法给出的结果进行了比较。据证明,所提出的在线检测方案优于具有离线学习过程的几乎所有可用的DDOS分类算法。

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