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SVM Ensemble Intrusion Detection Model Based on Rough Set Feature Reduct

机译:基于粗糙集特征约简的支持向量机集成入侵检测模型

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摘要

To address the problem of low accuracy and high false alarm rate in network intrusion detection system, an Intrusion detection model of SVM ensemble using rough set feature reduct is presented. Utilizing the character that Rough set algorithm can keep the discernability of original dataset after reduction, the reducts of the original dataset are calculated and used to train individual SVM classifier for ensemble, which increase the diversity between individual classifiers, and consequently, increase the probability of detection accuracy improving. To validate the effectiveness of the proposed method, simulation experiments are performed based on the KDD 99 dataset. During the process of the experiments, two arguments, the sample number and the base classification number, are discussed to test their effect on the final result. And then detection performance comparison among the SVMusing all samples, SVM-Bagging ensemble and Rough Set based SVM-Bagging are performed. The results show that the Rough Set based SVM-Bagging is a promised ensemble method owning to its high diversity, high detection accuracy and faster speed in intrusion detection.
机译:针对网络入侵检测系统精度低,误报率高的问题,提出了一种基于粗糙集特征约简的支持向量机集成入侵检测模型。利用粗糙集算法可以在约简后保持原始数据集可分辨性的特点,计算原始数据集的约数,并将其用于训练单个SVM分类器进行集成,从而增加了各个分类器之间的多样性,从而增加了分类的可能性。检测精度提高。为了验证所提出方法的有效性,基于KDD 99数据集进行了仿真实验。在实验过程中,讨论了两个参数,即样本编号和基本分类编号,以测试它们对最终结果的影响。然后,使用所有样本,SVM-Bagging集成和基于粗糙集的SVM-Bagging进行SVM之间的检测性能比较。结果表明,基于粗糙集的SVM-Bagging方法具有多样性高,检测精度高,入侵检测速度快等优点,是一种很有前途的集成方法。

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