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Best Subset Solution Path for Linear Dimension Reduction Models using Continuous Optimization

Methodology 2024-04-01 v1 Computation Other Statistics

Abstract

The selection of best variables is a challenging problem in supervised and unsupervised learning, especially in high dimensional contexts where the number of variables is usually much larger than the number of observations. In this paper, we focus on two multivariate statistical methods: principal components analysis and partial least squares. Both approaches are popular linear dimension-reduction methods with numerous applications in several fields including in genomics, biology, environmental science, and engineering. In particular, these approaches build principal components, new variables that are combinations of all the original variables. A main drawback of principal components is the difficulty to interpret them when the number of variables is large. To define principal components from the most relevant variables, we propose to cast the best subset solution path method into principal component analysis and partial least square frameworks. We offer a new alternative by exploiting a continuous optimization algorithm for best subset solution path. Empirical studies show the efficacy of our approach for providing the best subset solution path. The usage of our algorithm is further exposed through the analysis of two real datasets. The first dataset is analyzed using the principle component analysis while the analysis of the second dataset is based on partial least square framework.

Keywords

Cite

@article{arxiv.2403.20007,
  title  = {Best Subset Solution Path for Linear Dimension Reduction Models using Continuous Optimization},
  author = {Benoit Liquet and Sarat Moka and Samuel Muller},
  journal= {arXiv preprint arXiv:2403.20007},
  year   = {2024}
}

Comments

Main paper 26 pages including references and 17 pages for the supplementary material