Litcius/Paper detail

Time Matters: Temporal NetFlow Features for ML-Based Network Intrusion Detection

Majed Luay, Siamak Layeghy, Seyedehfaezeh Hosseininoorbin, Mohanad Sarhan, Nour Moustafa, Marius Portmann, Marius Portmann

2026IEEE Access5 citationsDOIOpen Access PDF

Abstract

This paper investigates the temporal analysis of NetFlow datasets for machine learning (ML)-based network intrusion detection systems (NIDS). Although many previous studies have highlighted the critical role of temporal features, such as inter-packet arrival time and flow length/duration, in NIDS, the currently available NetFlow datasets for NIDS lack these temporal features. This study addresses this gap by creating and making publicly available a set of NetFlow datasets that incorporate these temporal features [1]. With these temporal features, we provide a comprehensive temporal analysis of NetFlow datasets by examining the distribution of various features over time and presenting time-series representations of NetFlow features. This temporal analysis has not been previously provided in the existing literature. We also borrowed an idea from signal processing, time frequency analysis, and tested it to see how different the time frequency signal presentations (TFSPs) are for various attacks. The results indicate that many attacks have unique patterns, which could help ML models to identify them more easily.

Topics & Concepts

NetFlowComputer scienceData miningIntrusion detection systemSet (abstract data type)Data setIntrusionAnomaly-based intrusion detection systemAnomaly detectionTraffic analysisNetwork analysisSIGNAL (programming language)Artificial intelligenceSequence (biology)Network Security and Intrusion DetectionSoftware-Defined Networks and 5GAnomaly Detection Techniques and Applications