Title :
Rapid Identification of BitTorrent traffic
Author :
But, Jason ; Branch, Philip ; Le, Tung
Author_Institution :
Centre for Adv. Internet Archit., Swinburne Univ. of Technol., Melbourne, VIC, Australia
Abstract :
BitTorrent is one of the dominant traffic generating applications in the Internet today. The ability to identify BitTorrent traffic in real-time could allow network operators to better manage network traffic and provide a better service to their customers. In this paper we analyse the statistical properties of BitTorrent traffic and select four features that can be used for real-time classification using Machine Learning techniques. We then train and test a classifier using the C4.5 algorithm. Our results show that based on statistics calculated on 150-packet sub-flows, we can classify BitTorrent traffic with Recall of 98.2% and Precision of 96.5%. We then show that 98.1% of sub-flows from other client-server bulk transfer applications are correctly classified as non-BitTorrent.
Keywords :
Internet; client-server systems; learning (artificial intelligence); peer-to-peer computing; protocols; real-time systems; statistical analysis; telecommunication traffic; BitTorrent traffic; C4.5 algorithm; Internet; client-server bulk transfer; machine learning; network operator; network traffic; packet subflow; peer-to-peer protocol; real-time classification; statistical property; Classification algorithms; Feature extraction; Machine learning; Payloads; Protocols; Real time systems; Servers;
Conference_Titel :
Local Computer Networks (LCN), 2010 IEEE 35th Conference on
Conference_Location :
Denver, CO
Print_ISBN :
978-1-4244-8387-7
DOI :
10.1109/LCN.2010.5735770