Litcius/Paper detail

Enhanced Network Intrusion Detection System

Ketan Kotecha, Raghav Verma, Prahalad V. Rao, Priyanshu Prasad, Vipul Kumar Mishra, Tapas Badal, Divyansh Jain, Deepak Garg, Shakti Sharma

2021Sensors24 citationsDOIOpen Access PDF

Abstract

A reasonably good network intrusion detection system generally requires a high detection rate and a low false alarm rate in order to predict anomalies more accurately. Older datasets cannot capture the schema of a set of modern attacks; therefore, modelling based on these datasets lacked sufficient generalizability. This paper operates on the UNSW-NB15 Dataset, which is currently one of the best representatives of modern attacks and suggests various models. We discuss various models and conclude our discussion with the model that performs the best using various kinds of evaluation metrics. Alongside modelling, a comprehensive data analysis on the features of the dataset itself using our understanding of correlation, variance, and similar factors for a wider picture is done for better modelling. Furthermore, hypothetical ponderings are discussed for potential network intrusion detection systems, including suggestions on prospective modelling and dataset generation as well.

Topics & Concepts

Computer scienceIntrusion detection systemConstant false alarm rateData miningSchema (genetic algorithms)Generalizability theoryAnomaly-based intrusion detection systemFalse alarmMachine learningData setIntrusionSet (abstract data type)Artificial intelligenceStatisticsGeologyGeochemistryMathematicsProgramming languageNetwork Security and Intrusion DetectionNetwork Packet Processing and OptimizationInternet Traffic Analysis and Secure E-voting