Title of article
Identification of VoIP encrypted traffic using a machine learning approach
Author/Authors
Alshammari, Riyad King Saud Bin Abdulaziz University for Health Sciences - College of Public Health and Health Informatics, Saudi Arabia , Zincir-Heywood, A. Nur Dalhousie University - Faculty of Computer Science, Canada
From page
77
To page
92
Abstract
We investigate the performance of three different machine learning algorithms, namely C5.0, AdaBoost and Genetic programming (GP), to generate robust classifiers for identifying VoIP encrypted traffic. To this end, a novel approach (Alshammari and Zincir-Heywood, 2011) based on machine learning is employed to generate robust signatures for classifying VoIP encrypted traffic. We apply statistical calculation on network flows to extract a feature set without including payload information, and information based on the source and destination of ports number and IP addresses. Our results show that finding and employing the most suitable sampling and machine learning technique can improve the performance of classifying VoIP significantly
Keywords
Machine learning , Encrypted traffic , Robustness , Network signatures
Journal title
Journal Of King Saud University - Computer and Information Sciences
Journal title
Journal Of King Saud University - Computer and Information Sciences
Record number
2609815
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