Title
Efficient, Accurate Internet Traffic Classification using Discretization in Naive Bayes
Abstract
Accurate network traffic classification is fundamental to numerous network activities, from quality of service to providing operators with useful forecasts for long-term provisioning. In this paper, we apply the discretization method in Naive Bayes for Internet traffic identification and compare the result with that of previously applied Naive Bayes kernel estimation in AUCKLAND VI and Entry data sets. Our results show that discretization is more robust and accurate than kernel estimation. The average accuracy is improved to 97.93% and outperforms the kernel estimation by up to 4.2% in Entry data sets. For AUCKLAND VI data sets, the average accuracy is improved to 90.37% from 34.17%. We also find that discretization method for Naive Bayes is more efficient than kernel method during classification.
Year
DOI
Venue
2008
10.1109/ICNSC.2008.4525474
ICNSC
Keywords
Field
DocType
bayes methods,quality of service,internet,naive bayes kernel estimation,internet traffic classification,telecommunication traffic,naive bayes,computer science,kernel method,kernel,machine learning,internet traffic
Traffic classification,Kernel (linear algebra),Data mining,Discretization,Data set,Naive Bayes classifier,Computer science,Artificial intelligence,Kernel method,Internet traffic,Machine learning,Kernel density estimation
Conference
ISSN
ISBN
Citations 
1810-7869
978-1-4244-1686-8
1
PageRank 
References 
Authors
0.38
6
4
Name
Order
Citations
PageRank
Yuhai Liu183.24
Zhiqiang Li210.38
Shanqing Guo313427.26
Taiming Feng41076.32