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Improved TLBO-JAYA Algorithm for Subset Feature Selection and Parameter Optimisation in Intrusion Detection System

机译:改进的TLBO-JAYA算法用于子集特征选择和入侵检测系统参数优化

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Many optimisation-based intrusion detection algorithms have been developed and are widely used for intrusion identification. This condition is attributed to the increasing number of audit data features and the decreasing performance of human-based smart intrusion detection systems regarding classification accuracy, false alarm rate, and classification time. Feature selection and classifier parameter tuning are important factors that affect the performance of any intrusion detection system. In this paper, an improved intrusion detection algorithm for multiclass classification was presented and discussed in detail. The proposed method combined the improved teaching-learning-based optimisation (ITLBO) algorithm, improved parallel JAYA (IPJAYA) algorithm, and support vector machine. ITLBO with supervised machine learning (ML) technique was used for feature subset selection (FSS). The selection of the least number of features without causing an effect on the result accuracy in FSS is a multiobjective optimisation problem. This work proposes ITLBO as an FSS mechanism, and its algorithm-specific, parameterless concept (no parameter tuning is required during optimisation) was explored. IPJAYA in this study was used to update the C and gamma parameters of the support vector machine (SVM). Several experiments were performed on the prominent intrusion ML dataset, where significant enhancements were observed with the suggested ITLBO-IPJAYA-SVM algorithm compared with the classical TLBO and JAYA algorithms.
机译:已经开发了许多基于优化的入侵检测算法,并且广泛用于入侵识别。这种情况归因于越来越多的审计数据特征以及关于分类精度,误报率和分类时间的基于人的智能入侵检测系统的性能。特征选择和分类器参数调整是影响任何入侵检测系统性能的重要因素。本文介绍并详细讨论了一种改进的多标量分类的改进的入侵检测算法。该方法组合了改进的教学 - 基于教学优化(ITLBO)算法,改进了并行Jaya(IPJaya)算法,支持向量机。具有监督机器学习(ML)技术的ITLBO用于特征子集选择(FSS)。在不引起FSS中的结果精度的情况下选择最小的特征的选择是一个多目标优化问题。这项工作提出了ITLBO作为FSS机制,并探讨了其算法的算法(无参数调整)进行了探索(在优化期间不需要参数调整)。本研究中的IPJaya用于更新支持向量机(SVM)的C和伽马参数。在突出的入侵ML数据集上进行了几个实验,其中与典型的TLBO和Jaya算法相比,通过建议的ITLBO-IPAYA-SVM算法观察了显着的增强。

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