Probability Estimates for Multi-Class Classification by Pairwise Coupling

Part of Advances in Neural Information Processing Systems 16 (NIPS 2003)

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Authors

Ting-fan Wu, Chih-jen Lin, Ruby Weng

Abstract

Pairwise coupling is a popular multi-class classification method that combines together all pairwise comparisons for each pair of classes. This paper presents two approaches for obtaining class probabilities. Both methods can be reduced to linear systems and are easy to implement. We show conceptually and experimentally that the proposed approaches are more stable than two existing popular methods: voting and [3].