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Comparison of fuzzy robust Kernel C-Means and support vector machines for intrusion detection systems using modified kernel nearest neighbor feature selection

机译:使用修改的内核最近邻特征选择的模糊鲁棒内核C型和支持向量机的入侵检测系统的比较

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Intrusion detection Systems (IDS) can be used to monitor and analyze user activities in a computer. One of the most important tasks of IDS is to protect the target of the attack: user password, file systems and kernel systems. The attack itself can be classified into two categories, which are host-based attacks, and also network based attacks. This study proposes a new method that is FRKCM (Fuzzy Robust Kernel C-Means) to solve IDS problems. For our empirical study, we use dataset from KDD99, which contains five classes: Normal, Probe, DOS, U2R and R2L. This paper also discusses Feature Selection procedure because it may improve the performance of classification algorithm. For the Feature Selection, MKNN (Modified Kernel Nearest Neighbor) method has been chosen in this paper. MKNN is a new method for feature selection. There will be an accuracy comparison between FRKCM method and SVM (Support Vector Machine) method. Our results indicate that the Fuzzy Robust Kernel C-Means provides better results better than SVM method in terms of classification accuracy because the highest accuracy of FRKCM method using Poli Kernel reaches approximately 99.26 % while SVM method using RBF Kernel was only 99.22 %.
机译:入侵检测系统(IDS)可用于监视和分析计算机中的用户活动。 ID最重要的任务之一是保护攻击的目标:用户密码,文件系统和内核系统。攻击本身可以分为两类,这些类别是基于宿主的攻击,以及基于网络的攻击。本研究提出了一种新方法,它是FRKCM(模糊鲁棒内核C-Meancy)来解决IDS问题。对于我们的实证研究,我们使用来自KDD99的数据集,其中包含五类:正常,探测,DOS,U2R和R2L。本文还讨论了特征选择程序,因为它可以提高分类算法的性能。对于特征选择,本文已选择MKNN(修改后的内核最近邻居)方法。 MKNN是一种用于特征选择的新方法。 FRKCM方法和SVM(支持向量机)方法之间将有准确的比较。我们的结果表明,在分类精度方面,模糊稳健的内核C型方法提供了比SVM方法更好的结果,因为使用POLI内核的FRKCM方法的最高精度达到大约99.26%,而使用RBF内核的SVM方法仅为99.22%。

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