A scalable pairwise class interaction framework for multidimensional classification

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Highlights

  • We propose a novel framework for multidimensional classification.

  • A first stage captures pairwise class interactions using transformation methods.

  • A second stage builds and performs inference over a Markov Random Field.

  • Its drawback is complexity. We propose strategies that improve scalability.

  • We obtain favorable comparison with the state-of-the-art.

Abstract

We present a general framework for multidimensional classification that captures the pairwise interactions between class variables. The pairwise class interactions are encoded using a collection of base classifiers (Phase 1), for which the class predictions are combined in a Markov random field that is subsequently used for multidimensional inference (Phase 2); thus, the framework can be positioned between multilabel Bayesian classifiers and label transformation-based approaches. Our proposal leads to a general framework supporting a wide range of base classifiers in the first phase as well as different inference methods in the second phase. We describe the basic framework and its main properties, as well as strategies for ensuring the scalability of the framework. We include a detailed experimental evaluation based on a range of publicly available databases. Here we analyze the overall performance of the framework and we test the behavior of the different scalability strategies proposed. A comparison with other state-of-the-art multidimensional classifiers show that the proposed framework either outperforms or is competitive with the tested straw-men methods.

Keywords

Multidimensional classification
Probabilistic classifiers
Markov random fields

Cited by (0)

This paper is an extension of the conference paper [1].