DocumentCode :
591823
Title :
Sub-flow packet sampling for scalable ML classification of interactive traffic
Author :
Zander, Sebastian ; Thuy Nguyen ; Armitage, Grenville
Author_Institution :
Centre for Adv. Internet Archit. (CAIA), Swinburne Univ. of Technol., Melbourne, VIC, Australia
fYear :
2012
fDate :
22-25 Oct. 2012
Firstpage :
68
Lastpage :
75
Abstract :
Machine Learning (ML) classifiers have been shown to provide accurate, timely and continuous IP flow classification when evaluating sub-flows (short moving windows of packets within flows). They can be used to provide automated QoS management for interactive traffic, such as fast-paced multiplayer games or VoIP. As with other ML classification approaches, previous sub-flow techniques have assumed all packets in all flows are being observed and evaluated. This limits scalability and poses a problem for practical deployment in network core or edge routers. In this paper we propose and evaluate subflow packet sampling (SPS) to reduce an ML sub-flow classifier´s resource requirements with minimal compromise of accuracy. While random packet sampling increases classification time from <;1 second to over 30 seconds and can reduce accuracy from 98% to <;90%, our tailored SPS technique retains classification times of <;1 second while providing 98% accuracy.
Keywords :
IP networks; learning (artificial intelligence); pattern classification; quality of service; telecommunication traffic; IP flow classification; ML; SPS; VoIP; automated QoS management; fast-paced multiplayer games; interactive traffic; machine learning classifiers; scalable ML classification; subflow packet sampling; Accuracy; Arrays; Games; IP networks; Niobium; Quality of service; Training; Machine Learning; Packet Sampling; Traffic Classification;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Local Computer Networks (LCN), 2012 IEEE 37th Conference on
Conference_Location :
Clearwater, FL
ISSN :
0742-1303
Print_ISBN :
978-1-4673-1565-4
Type :
conf
DOI :
10.1109/LCN.2012.6423688
Filename :
6423688
Link To Document :
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