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Learning Imbalanced Classifiers Locally and Globally with One-Side Probability Machine

Publication ,  Journal Article
Huang, K; Zhang, R; Yin, XC
Published in: Neural Processing Letters
June 1, 2015

We consider the imbalanced learning problem, where the data associated with one class are far fewer than those associated with the other class. Current imbalanced learning methods often handle this problem by adapting certain intermediate parameters so as to impose a bias on the minority data. However, most of these methods are in rigorous and need to adapt those factors via the trial-and-error procedure. Recently, a new model called Biased Minimax Probability Machine (BMPM) presents a rigorous and systematic work and has demonstrated very promising performance on imbalance learning. Despite its success, BMPM exclusively relies on global information, namely, the first order and second order data information; such information might be however unreliable, especially for the minority data. In this paper, we propose a new model called One-Side Probability Machine (OSPM). Different from the previous approaches, OSPM can lead to rigorous treatment on biased classification tasks. Importantly, the proposed OSPM exploits the reliable global information from one side only, i.e., the majority class, while engaging the robust local learning from the other side, i.e., the minority class. To our best knowledge, OSPM presents the first model capable of learning data both locally and globally. Our proposed model has also established close connections with various famous models such as BMPM, Support Vector Machine, and Maxi-Min Margin Machine. One appealing feature is that the optimization problem involved in the novel OSPM model can be cast as a convex second order conic programming problem with the global optimum guaranteed. A series of experimental results on three data sets demonstrate the advantages of our proposed methods over four competitive approaches.

Duke Scholars

Published In

Neural Processing Letters

DOI

EISSN

1573-773X

ISSN

1370-4621

Publication Date

June 1, 2015

Volume

41

Issue

3

Start / End Page

311 / 323

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 4611 Machine learning
  • 4602 Artificial intelligence
  • 1702 Cognitive Sciences
  • 0801 Artificial Intelligence and Image Processing
 

Citation

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Huang, K., Zhang, R., & Yin, X. C. (2015). Learning Imbalanced Classifiers Locally and Globally with One-Side Probability Machine. Neural Processing Letters, 41(3), 311–323. https://doi.org/10.1007/s11063-014-9370-9
Huang, K., R. Zhang, and X. C. Yin. “Learning Imbalanced Classifiers Locally and Globally with One-Side Probability Machine.” Neural Processing Letters 41, no. 3 (June 1, 2015): 311–23. https://doi.org/10.1007/s11063-014-9370-9.
Huang K, Zhang R, Yin XC. Learning Imbalanced Classifiers Locally and Globally with One-Side Probability Machine. Neural Processing Letters. 2015 Jun 1;41(3):311–23.
Huang, K., et al. “Learning Imbalanced Classifiers Locally and Globally with One-Side Probability Machine.” Neural Processing Letters, vol. 41, no. 3, June 2015, pp. 311–23. Scopus, doi:10.1007/s11063-014-9370-9.
Huang K, Zhang R, Yin XC. Learning Imbalanced Classifiers Locally and Globally with One-Side Probability Machine. Neural Processing Letters. 2015 Jun 1;41(3):311–323.
Journal cover image

Published In

Neural Processing Letters

DOI

EISSN

1573-773X

ISSN

1370-4621

Publication Date

June 1, 2015

Volume

41

Issue

3

Start / End Page

311 / 323

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 4611 Machine learning
  • 4602 Artificial intelligence
  • 1702 Cognitive Sciences
  • 0801 Artificial Intelligence and Image Processing