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Dealing with Multiple Classes in Online Class Imbalance Learning

conference contribution
posted on 2016-04-18, 11:17 authored by S. Wang, Leandro Lei Minku, X. Yao
Online class imbalance learning deals with data streams having very skewed class distributions in a timely fashion. Although a few methods have been proposed to handle such problems, most of them focus on two-class cases. Multi-class imbalance imposes additional challenges in learning. This paper studies the combined challenges posed by multi-class imbalance and online learning, and aims at a more effective and adaptive solution. First, we introduce two resampling-based ensemble methods, called MOOB and MUOB, which can process multi-class data directly and strictly online with an adaptive sampling rate. Then, we look into the impact of multi-minority and multi-majority cases on MOOB and MUOB in comparison to other methods under stationary and dynamic scenarios. Both multi-minority and multi-majority make a negative impact. MOOB shows the best and most stable G-mean in most stationary and dynamic cases.

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Citation

25th International Joint Conference on Artificial Intelligence (IJCAI'16) 2016

Author affiliation

/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Computer Science

Source

25th International Joint Conference on Artificial Intelligence (IJCAI'16), 9th-15th July, 2016, New York City, USA

Version

  • AM (Accepted Manuscript)

Published in

25th International Joint Conference on Artificial Intelligence (IJCAI'16) 2016

Publisher

International Joint Conferences on Artificial Intelligence

Acceptance date

2016-04-05

Copyright date

2016

Publisher version

http://www.ijcai.org/Abstract/16/302

Language

en

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