Title
A low complexity real-time Internet traffic flows neuro-fuzzy classifier
Abstract
Traffic flow classification to identify applications and activity of users is widely studied both to understand privacy threats and to support network functions such as usage policies and QoS. For those needs, real time classification is required and classifier's complexity is as important as accuracy, especially given the increasing link speeds also in the access section of the network. We propose the application of a highly efficient classification system, specifically Min-Max neuro-fuzzy networks trained by PARC algorithm, and compare it with popular classification systems, by considering traffic data sets collected in different epochs and places. We show that Min-Max networks achieve high accuracy, in line with the best performing algorithms on Weka (SVM, Random Tree, Random Forest). The required classification model complexity is much lower with Min-Max networks with respect to the other models, enabling the implementation of effective classification algorithms in real time on inexpensive platforms.
Year
DOI
Venue
2015
10.1016/j.comnet.2015.09.011
Computer Networks
Keywords
Field
DocType
Traffic flow classification,Neurofuzzy networks,Features selection,Genetic algorithms,Classifier complexity,FPGA
Data mining,Computer science,Computer network,Quality of service,Artificial intelligence,Classifier (linguistics),Random forest,Internet traffic,Genetic algorithm,Traffic flow,Support vector machine,Statistical classification,Machine learning
Journal
Volume
Issue
ISSN
91
C
1389-1286
Citations 
PageRank 
References 
6
0.47
27
Authors
4
Name
Order
Citations
PageRank
Antonello Rizzi136341.68
Alfonso Iacovazzi2425.19
Andrea Baiocchi316922.96
Silvia Colabrese460.47