Publication | Closed Access
QRP05-4: Internet Traffic Identification using Machine Learning
108
Citations
14
References
2006
Year
Internet Traffic IdentificationInternet Traffic AnalysisNaive Bayes ClassifierMachine LearningData ScienceData MiningPattern RecognitionEngineeringPredictive AnalyticsTraffic PredictionKnowledge DiscoveryEncrypted TrafficComputer ScienceNetwork Traffic MeasurementTraffic MonitoringUnsupervised Clustering Technique
We apply an unsupervised machine learning approach for Internet traffic identification and compare the results with that of a previously applied supervised machine learning approach. Our unsupervised approach uses an expectation maximization (EM) based clustering algorithm and the supervised approach uses the naive Bayes classifier. We find the unsupervised clustering technique has an accuracy up to 91% and outperform the supervised technique by up to 9%. We also find that the unsupervised technique can be used to discover traffic from previously unknown applications and has the potential to become an excellent tool for exploring Internet traffic.
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