Litcius/Paper detail

ML-Based Traffic Classification in an SDN-Enabled Cloud Environment

Omayma Belkadi, Alexandru Vulpe, Yassin Laaziz, Simona Halunga

2023Electronics28 citationsDOIOpen Access PDF

Abstract

Traffic classification plays an essential role in network security and management; therefore, studying traffic in emerging technologies can be useful in many ways. It can lead to troubleshooting problems, prioritizing specific traffic to provide better performance, detecting anomalies at an early stage, etc. In this work, we aim to propose an efficient machine learning method for traffic classification in an SDN/cloud platform. Traffic classification in SDN allows the management of flows by taking the application’s requirements into consideration, which leads to improved QoS. After our tests were implemented in a cloud/SDN environment, the method that we proposed showed that the supervised algorithms used (Naive Bayes, SVM (SMO), Random Forest, C4.5 (J48)) gave promising results of up to 97% when using the studied features and over 95% when using the generated features.

Topics & Concepts

Cloud computingComputer scienceTraffic classificationC4.5 algorithmNaive Bayes classifierTroubleshootingQuality of serviceSupport vector machineRandom forestMachine learningData miningArtificial intelligenceComputer networkDistributed computingOperating systemInternet Traffic Analysis and Secure E-votingNetwork Security and Intrusion DetectionAdvanced Malware Detection Techniques