English

Selective Factor Extraction in High Dimensions

Methodology 2016-10-27 v4 Machine Learning

Abstract

This paper studies simultaneous feature selection and extraction in supervised and unsupervised learning. We propose and investigate selective reduced rank regression for constructing optimal explanatory factors from a parsimonious subset of input features. The proposed estimators enjoy sharp oracle inequalities, and with a predictive information criterion for model selection, they adapt to unknown sparsity by controlling both rank and row support of the coefficient matrix. A class of algorithms is developed that can accommodate various convex and nonconvex sparsity-inducing penalties, and can be used for rank-constrained variable screening in high-dimensional multivariate data. The paper also showcases applications in macroeconomics and computer vision to demonstrate how low-dimensional data structures can be effectively captured by joint variable selection and projection.

Keywords

Cite

@article{arxiv.1403.6212,
  title  = {Selective Factor Extraction in High Dimensions},
  author = {Yiyuan She},
  journal= {arXiv preprint arXiv:1403.6212},
  year   = {2016}
}
R2 v1 2026-06-22T03:33:35.709Z