4.2 Article

Sparse concordance-based ordinal classification

Journal

SCANDINAVIAN JOURNAL OF STATISTICS
Volume 50, Issue 3, Pages 934-961

Publisher

WILEY
DOI: 10.1111/sjos.12606

Keywords

concordance function; ordinal classification; regularization; sparsity; variable selection

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Ordinal classification is an important area in machine learning, aiming to accurately predict the relative order of instances. We propose a novel concordance-based approach that incorporates variable selection and penalized optimization for sparsity considerations.
Ordinal classification is an important area in statistical machine learning, where labels exhibit a natural order. One of the major goals in ordinal classification is to correctly predict the relative order of instances. We develop a novel concordance-based approach to ordinal classification, where a concordance function is introduced and a penalized smoothed method for optimization is designed. Variable selection using the L1$$ {L}_1 $$ penalty is incorporated for sparsity considerations. Within the set of classification rules that maximize the concordance function, we find optimal thresholds to predict labels by minimizing a loss function. After building the classifier, we derive nonparametric estimation of class conditional probabilities. The asymptotic properties of the estimators as well as the variable selection consistency are established. Extensive simulations and real data applications show the robustness and advantage of the proposed method in terms of classification accuracy, compared with other existing methods.

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