Feature Reduction and Selection Based Optimization for Hybrid Intrusion Detection System Using PGO followed by SVM

S. Sagar, A. Shrivastava, Chetan Gupta
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引用次数: 1

Abstract

The requisition or insistence of internet (web) connectivity i.e. wireless network like WSN, MANET, cellular network, broadband increases day by day. So it is obvious that increase demand of connectivity increase the problem also i.e. safety and security. In this paper discusses the security issue or problem on connectivity network generally define as the network intrusion (malicious activity) finding system. This system has to be used for secure or protect the information data from any unwanted activities. In this paper presents the feature reduction and selection based on an optimization mechanism which followed by supervised learning classifier. This paper introduce the hybrid intrusion detection system using supervised classifier i.e. SVM followed by the optimization mechanism i.e. PGO. Every IDS system needs reduce feature data set attributes to perform efficiently and smoothly that has to be major issue for any NIDS. The hybrid optimization mechanism provide the optimal solution, plant growth optimization mechanism inspired the natural tree growth process, here make this an artificial plant growth process and apply for data set attributes and set similar condition. That optimization method provide the best fitness value for branches and leaf for an artificial plant, these branches or leaf fit for artificial plant growth or not. According to these fitness values data set attributes further classified into intruder class. In this paper present mechanism or system use NSL-KDD data set (i.e. basically intruder class attribute data sets contain DOS, PROBE, R2L and U2R intruder class) for evaluation and comparing the mechanism performance in term of accuracy and Kappa. This hybrid mechanism based on optimization decreased the false alarm rate of the system and enhance the performance.
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基于特征约简和选择的PGO - SVM混合入侵检测系统优化
互联网(web)连接的需求或坚持,即无线网络,如WSN, MANET,蜂窝网络,宽带日益增加。因此,很明显,连接需求的增加也增加了安全问题。本文讨论了连接网络的安全问题,一般将其定义为网络入侵(恶意活动)发现系统。该系统必须用于保护或保护信息数据免受任何不必要的活动。本文提出了一种基于优化机制的特征约简和选择,然后采用监督学习分类器。本文介绍了一种基于监督分类器(SVM)和优化机制(PGO)的混合入侵检测系统。每个入侵检测系统都需要减少特征数据集属性,以有效和平稳地执行,这是任何入侵检测系统的主要问题。混合优化机制提供了最优解,植物生长优化机制启发了自然树木的生长过程,这里使这一人工植物生长过程应用于数据集属性和设置相似的条件。该优化方法为人工植物的枝叶提供最佳适应度值,这些枝叶是否适合人工植物生长。根据这些适应度值将数据集属性进一步划分为入侵者类。本文的机制或系统使用NSL-KDD数据集(即入侵者类属性数据集基本上包含DOS、PROBE、R2L和U2R入侵者类)对机制性能的准确性和Kappa进行评估和比较。这种基于优化的混合机制降低了系统的虚警率,提高了系统的性能。
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