EBJRV: An Ensemble of Bagging, J48 and Random Committee by Voting for Efficient Classification of Intrusions

A. Niranjan, Anusha Prakash, N. Veena, M. Geetha, P. Deepa Shenoy, K. Venugopal
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引用次数: 10

Abstract

An effective Intrusion Detection System must be able to classify any ongoing intrusion activity as, ‘abnormal’ with utmost accuracy. The key factor that mainly affects the accuracy of an Intrusion Detection System is the selection of a classification algorithm whose True Positive Rate is the maximum and False Positive Rate is the minimum. An efficient classification algorithm can thus greatly improve the accuracy of the Intrusion Detection System. To ensure the time taken to build the model is the least, Information Gain Feature Selection algorithm is used for ranking the Features. A standard deviation of all the ranks is computed and all the features that are less than the standard deviation value are discarded. This results in the selection of a sub feature set of only 16 out of 41 features available in the data set. When voting of Bagging, J48 and Random Committee techniques for classification is carried out on this reduced feature set, most encouraging accuracy values can be achieved.
基于Bagging、J48和随机委员会投票的入侵有效分类方法
一个有效的入侵检测系统必须能够以最高的准确性将任何正在进行的入侵活动分类为“异常”。选择真阳性率最大、假阳性率最小的分类算法是影响入侵检测系统准确率的关键因素。一种高效的分类算法可以大大提高入侵检测系统的准确率。为了保证构建模型所需的时间最少,采用信息增益特征选择算法对特征进行排序。计算所有秩的标准偏差,并丢弃小于标准偏差值的所有特征。这将导致从数据集中41个可用特征中只选择16个子特征集。当对Bagging、J48和Random Committee的分类技术在这个简化的特征集上进行投票时,可以获得最令人鼓舞的精度值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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