DDoS attacks, also known as distributed denial of service (DDoS) attacks, have emerged as one of the most serious and fastest-growing threats on the Internet. Denial-of-service (DDoS) attacks are an example of cyber attacks that target a specific system or network in an attempt to render it inaccessible or unusable for a period of time. As a result, improving the detection of diverse types of DDoS cyber threats with better algorithms and higher accuracy while keeping the computational cost under control has become the most significant component of detecting DDoS cyber threats. In order to properly defend the targeted network or system, it is critical to first determine the sort of DDoS assault that has been launched against it. A number of ensemble classification techniques are presented in this paper, which combines the performance of various algorithms. They are then compared to existing Machine Learning Algorithms in terms of their effectiveness in detecting different types of DDoS attacks using accuracy, F1 scores, and ROC curves. The results show high accuracy and good performance.
翻译:DDoS攻击,又称分布式拒绝服务(DDoS)攻击,已成为互联网上最严重和增长最快的威胁之一。拒绝服务(DDoS)攻击是针对特定系统或网络的网络攻击的一个实例,目的是在一段时间内使其无法使用或无法使用。结果,用更好的算法和更高的准确度,改进对多种DDoS网络威胁的探测,同时控制计算成本,成为发现DDoS网络威胁的最重要组成部分。为了适当保护目标网络或系统,必须首先确定对它发动的DDoS攻击的类型。本文介绍了一系列混合分类技术,综合了各种算法的性能,然后与现有的机器学习算法比较,用精确度、F1分和ROC曲线来检测不同类型DDoS攻击的效果。结果显示高准确性和良好表现。