Development of an efficient classifier using proposed sensitivity-based feature selection technique for intrusion detection system

H. Hota, Dinesh K. Sharma, A. Shrivas
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引用次数: 2

Abstract

Intrusion detection system protects an individual computer or network computer from suspicious data and protects the system from unauthorized access. In this paper, we propose a feature selection technique (FST) known as sensitivity based feature selection technique (SBFST) which selects relevant features from intrusion data based on the value of sensitivity. We compare various existing FSTs with the proposed SBFST from three different categories of NSL-KDD data set. Experimental results reveal that C4.5 with SBFST performs better than other existing FSTs and produce a high accuracy of 99.68% with 11 features and 99.95% accuracy with nine features for the multiclass and binary class problems respectively. It has also produced 99.64% accuracy for both multiclass and binary class problems respectively with six and seven features. The performance of proposed SBFST is also verified using the intersection of features, segment by segment with other FSTs and found to be better.
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基于提出的基于灵敏度特征选择技术的入侵检测系统高效分类器的开发
入侵检测系统保护个人计算机或网络计算机免受可疑数据的侵害,保护系统免受未经授权的访问。本文提出了一种基于灵敏度的特征选择技术,即基于灵敏度的特征选择技术(SBFST),该技术基于灵敏度值从入侵数据中选择相关特征。我们比较了来自三种不同类别NSL-KDD数据集的各种现有fst与提出的SBFST。实验结果表明,基于SBFST的C4.5算法在多类和二类问题上的准确率分别达到99.68%和99.95%,分别达到11个特征和9个特征。对于6个特征的多类问题和7个特征的二分类问题,准确率均达到99.64%。通过与其他fst的特征段逐段相交,验证了所提出的SBFST的性能,发现其更好。
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