Title :
Ensemble classifier for traffic in presence of changing distributions
Author :
Runxin Wang ; Lei Shi ; Jennings, Brendan
Author_Institution :
Telecommun. Software & Syst..Group, Waterford Inst. of Technol., Waterford, Ireland
Abstract :
Traffic classification plays an important role in many short to medium term network management tasks and in long term network dimensioning/planning. In recent years a number of traffic classifiers have been proposed, in particular classifiers based on machine learning techniques exhibit high levels of accuracy. However, in practice, even if classifiers can be accurately trained at a given time, their accuracy will subsequently degrade when the characteristics of the network traffic change. In this paper, we propose an adjustable traffic classification system, the key technique of which is ensemble classification, assisted with a change detection method. Our system enables a traffic classifier to be effectively updated in response to the changing traffic distributions. Experimental results show that our classifier produces improved accuracy with relatively shorter updating time.
Keywords :
learning (artificial intelligence); pattern classification; telecommunication computing; telecommunication network management; change detection method; changing traffic distributions; ensemble classifier; long term network dimensioning; long term network planning; machine learning techniques; medium term network management; network traffic characteristics; short term network management; traffic classification; Accuracy; Internet; Payloads; Ports (Computers); Proposals; Support vector machines; Training; Machine Learning; Traffic Classification;
Conference_Titel :
Computers and Communications (ISCC), 2013 IEEE Symposium on
Conference_Location :
Split
DOI :
10.1109/ISCC.2013.6755018