使用机器学习技术的高效DDoS攻击检测

Fathima Nazarudeen, S. Sundar
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引用次数: 0

摘要

分布式拒绝服务(DDoS)攻击是故意试图中断特定服务器、网络、组织的常规流量,通过使受害者或其邻近服务器充斥网络流量。由于其常规模式和流量速率的重大变化,使用各种模型识别此类攻击具有挑战性。通过限制特征空间,最小化模型的过拟合和计算时间,使用自动检测方法来缓解这个问题。CICDDoS2019数据集包含广泛的DDoS攻击,用于在基于云的上下文中训练和访问所提出的方法。使用Extra Tree分类器提取相关特征,并将其提供给Decision Tree、XGBoost和Random Forest。因此,该模型可以有效地检测DDoS攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient DDoS Attack Detection using Machine Learning Techniques
Distributed Denial-of-Service (DDoS) attacks are deliberate attempts to interrupt the regular traffic of a specific server, network, organization, by flooding the victim or its neighbouring servers with network traffic. Identification of such attacks using various models is challenging due to the substantial modifications in their regular pattern and traffic rates. An automated detection approach is used to mitigate this issue, by limiting the feature space, which minimizes the model's overfitting and computational time. The CICDDoS2019 data set containing extensive DDoS attacks are used to train and access the proposed methodology in a cloud-based context. The relevant features are extracted using the Extra Tree classifier and they are fed to the Decision Tree, XGBoost, and Random Forest. Consequently, the proposed model can be used to detect DDoS attacks effectively.
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