English

Unobserved classes and extra variables in high-dimensional discriminant analysis

Methodology 2021-02-04 v1 Computation Machine Learning

Abstract

In supervised classification problems, the test set may contain data points belonging to classes not observed in the learning phase. Moreover, the same units in the test data may be measured on a set of additional variables recorded at a subsequent stage with respect to when the learning sample was collected. In this situation, the classifier built in the learning phase needs to adapt to handle potential unknown classes and the extra dimensions. We introduce a model-based discriminant approach, Dimension-Adaptive Mixture Discriminant Analysis (D-AMDA), which can detect unobserved classes and adapt to the increasing dimensionality. Model estimation is carried out via a full inductive approach based on an EM algorithm. The method is then embedded in a more general framework for adaptive variable selection and classification suitable for data of large dimensions. A simulation study and an artificial experiment related to classification of adulterated honey samples are used to validate the ability of the proposed framework to deal with complex situations.

Keywords

Cite

@article{arxiv.2102.01982,
  title  = {Unobserved classes and extra variables in high-dimensional discriminant analysis},
  author = {Michael Fop and Pierre-Alexandre Mattei and Charles Bouveyron and Thomas Brendan Murphy},
  journal= {arXiv preprint arXiv:2102.01982},
  year   = {2021}
}

Comments

29 pages, 29 figures

R2 v1 2026-06-23T22:47:45.316Z