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A Novel Framework for Generating Personalized Network Datasets for NIDS Based on Traffic Aggregation

Pablo Velarde-Alvarado, Hugo Gonzalez, Rafael Martínez-Peláez, Luis J. Mena, Alberto Ochoa-Brust, E. Moreno-García, Vanessa G. Félix, Rodolfo Ostos

2022Sensors11 citationsDOIOpen Access PDF

Abstract

In this paper, we addressed the problem of dataset scarcity for the task of network intrusion detection. Our main contribution was to develop a framework that provides a complete process for generating network traffic datasets based on the aggregation of real network traces. In addition, we proposed a set of tools for attribute extraction and labeling of traffic sessions. A new dataset with botnet network traffic was generated by the framework to assess our proposed method with machine learning algorithms suitable for unbalanced data. The performance of the classifiers was evaluated in terms of macro-averages of F1-score (0.97) and the Matthews Correlation Coefficient (0.94), showing a good overall performance average.

Topics & Concepts

Computer scienceData miningBotnetIntrusion detection systemProcess (computing)Task (project management)Set (abstract data type)MacroMachine learningArtificial intelligenceTraffic classificationComputer networkEngineeringThe InternetWorld Wide WebQuality of serviceProgramming languageOperating systemSystems engineeringNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-votingSpam and Phishing Detection
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