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On addressing the imbalance problem: A correlated KNN approach for network traffic classification

Version 2 2024-06-06, 01:57
Version 1 2015-03-30, 11:20
chapter
posted on 2024-06-06, 01:57 authored by D Wu, X Chen, C Chen, J Zhang, Y Xiang, W Zhou
With the arrival of big data era, the Internet traffic is growing exponentially. A wide variety of applications arise on the Internet and traffic classification is introduced to help people manage the massive applications on the Internet for security monitoring and quality of service purposes. A large number of Machine Learning (ML) algorithms are introduced to deal with traffic classification. A significant challenge to the classification performance comes from imbalanced distribution of data in traffic classification system. In this paper, we proposed an Optimised Distance-based Nearest Neighbor (ODNN), which has the capability of improving the classification performance of imbalanced traffic data. We analyzed the proposed ODNN approach and its performance benefit from both theoretical and empirical perspectives. A large number of experiments were implemented on the real-world traffic dataset. The results show that the performance of “small classes” can be improved significantly even only with small number of training data and the performance of “large classes” remains stable.

History

Volume

8792

Chapter number

11

Pagination

138-151

ISSN

0302-9743

eISSN

1611-3349

ISBN-13

9783319116983

Language

eng

Publication classification

B Book chapter, B1 Book chapter

Copyright notice

2014, Springer International Publishing

Extent

46

Editor/Contributor(s)

Au MH, Carminati B, Kuo CCJ

Publisher

Springer International Publishing

Place of publication

Heidelberg, Germany

Title of book

Network and System Security

Series

Lecture Notes in Computer Science