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A Stacking Ensemble for Network Intrusion Detection Using Heterogeneous Datasets

Smitha Rajagopal, Poornima Panduranga Kundapur, Katiganere Siddaramappa Hareesha

2020Security and Communication Networks217 citationsDOIOpen Access PDF

Abstract

The problem of network intrusion detection poses innumerable challenges to the research community, industry, and commercial sectors. Moreover, the persistent attacks occurring on the cyber-threat landscape compel researchers to devise robust approaches in order to address the recurring problem. Given the presence of massive network traffic, conventional machine learning algorithms when applied in the field of network intrusion detection are quite ineffective. Instead, a hybrid multimodel solution when sought improves performance thereby producing reliable predictions. Therefore, this article presents an ensemble model using metaclassification approach enabled by stacked generalization. Two contemporary as well as heterogeneous datasets, namely, UNSW NB-15, a packet-based dataset, and UGR’16, a flow-based dataset, that were captured in emulated as well as real network traffic environment, respectively, were used for experimentation. Empirical results indicate that the proposed stacking ensemble is capable of generating superior predictions with respect to a real-time dataset (97% accuracy) than an emulated one (94% accuracy).

Topics & Concepts

Computer scienceIntrusion detection systemData miningGeneralizationField (mathematics)Ensemble learningStackingMachine learningNetwork packetArtificial intelligenceComputer networkPhysicsMathematicsPure mathematicsMathematical analysisNuclear magnetic resonanceNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-votingAdvanced Malware Detection Techniques