Comparison of ensemble learning methods applied to network intrusion detection

Mustapha Belouch, S. E. Hadaj
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引用次数: 12

Abstract

This paper investigates the possibility of using ensemble learning methods to improve the performance of intrusion detection systems. We compare an ensemble of three ensemble learning methods, boosting, bagging and stacking in order to improve the detection rate and to reduce the false alarm rate. These ensemble methods use well-known and different base classification algorithms, J48 (decision tree), NB (Naïve Bayes), MLP (Neural Network) and REPTree. The comparison experiments are applied on UNSW-NB15 data set a recent public data set for network intrusion detection systems. Results show that using boosting, bagging can achieve higher accuracy than single classifier but stacking performs better than other ensemble learning methods.
集成学习方法在网络入侵检测中的应用比较
本文探讨了使用集成学习方法来提高入侵检测系统性能的可能性。为了提高检测率和降低虚警率,我们比较了三种集成学习方法的集成:提升、装袋和堆叠。这些集成方法使用了众所周知的和不同的基础分类算法,J48(决策树),NB (Naïve贝叶斯),MLP(神经网络)和REPTree。在UNSW-NB15数据集上进行了对比实验,UNSW-NB15数据集是网络入侵检测系统的最新公开数据集。结果表明,使用boosting方法,bagging方法比单一分类器的准确率更高,而stacking方法比其他集成学习方法的准确率更高。
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