基于增强支持向量机实时生成数据集的DDoS攻击检测

T. Subbulakshmi, Dr. S. Mercy Shalinie, V. GanapathiSubramanian
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引用次数: 42

摘要

对抗网络入侵检测的一种方法是开发应用机器学习和数据挖掘技术的系统。许多入侵检测系统(IDS)都存在较高的误报率和漏报率。必须在保持低失误率的同时提高检测率。本文的重点是生成分布式拒绝服务(DDoS)检测数据集,并使用增强型支持向量机进行检测。在实验测试平台上生成了具有各种直接属性和派生属性的DDoS数据集,该数据集具有14个属性和10种最新的DDoS攻击类别。利用生成的DDoS数据集,使用EMCSVM (Enhanced Multi Class Support Vector Machines)对攻击进行分类检测。利用支持向量机(SVM)和不同的参数值和核函数来评估EMCSVM的性能。与kddcup 99数据集具有6种DoS攻击相比,EMCSVM对包含10种最新DDoS攻击类型的DDoS数据集产生了更好的分类率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of DDoS attacks using Enhanced Support Vector Machines with real time generated dataset
An approach for combating network intrusion detection is the development of systems applying machine learning and data mining techniques. Many Intrusion Detection Systems (IDS) suffer from a high rate of false alarms and missed intrusions. The detection rate has to be improved while maintaining low rate of misses. The focus of this paper is to generate the Distributed Denial of Service (DDoS) detection dataset and detect them using the Enhanced Support Vector Machines. The DDoS dataset with various direct and derived attributes is generated in an experimental testbed which has 14 attributes and 10 types of latest DDoS attack classes. Using the generated DDoS dataset the Enhanced Multi Class Support Vector Machines (EMCSVM) is used for detection of the attacks into various classes. The performance of the EMCSVM is evaluated over SVM with various parameter values and kernel functions. It is inferred that EMCSVM produces better classification rate for the DDoS dataset with ten types of latest DDoS attacks when compared with the kddcup 99 dataset which has six types of DoS attacks.
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