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Multivariate correlation coefficient and mutual information-based feature selection in intrusion detection

机译:入侵检测中的多元相关系数和基于互信息的特征选择

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摘要

Feature selection is one of the major problems in an intrusion detection system (IDS) since there are additional and irrelevant features. This problem causes incorrect classification and low detection rate in those systems. In this article, four feature selection algorithms, named multivariate linear correlation coefficient (MLCFS), feature grouping based on multivariate mutual information (FGMMI), feature grouping based on linear correlation coefficient (FGLCC), and feature grouping based on pairwise Ml, are proposed to solve this problem. These algorithms are implementable in any IDS. Both linear and nonlinear measures are used in the sense that the correlation coefficient and the multivariate correlation coefficient are linear, whereas the Ml and the multivariate Ml are nonlinear. Least Square Support Vector Machine (LS-SVM) as an intrusion classifier is used to evaluate the selected features. Experimental results on the KDDcup99 and Network Security Laboratory-Knowledge Discovery and Data Mining (NSL) datasets showed that the proposed feature selection methods have a higher detection and accuracy and lower false-positive rate compared with the pairwise linear correlation coefficient and the pairwise Ml employed in several previous algorithms.
机译:特征选择是入侵检测系统(IDS)中的主要问题之一,因为存在附加且不相关的特征。此问题导致这些系统中的分类错误和检测率低。本文提出了四种特征选择算法,分别称为多元线性相关系数(MLCFS),基于多元互信息的特征分组(FGMMI),基于线性相关系数的特征分组(FGLCC)和基于成对M1的特征分组。解决这个问题。这些算法可在任何IDS中实现。在相关系数和多元相关系数是线性的意义上使用线性和非线性量度,而M1和多元M1是非线性的。最小二乘支持向量机(LS-SVM)作为入侵分类器,用于评估所选功能。在KDDcup99和网络安全实验室的知识发现和数据挖掘(NSL)数据集上的实验结果表明,与采用成对线性相关系数和成对M1相比,所提出的特征选择方法具有更高的检测和准确性,并且假阳性率更低。在以前的几种算法中。

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