Joint variable and rank selection for parsimonious estimation of high-dimensional matrices

10/17/2011
by   Florentina Bunea, et al.
0

We propose dimension reduction methods for sparse, high-dimensional multivariate response regression models. Both the number of responses and that of the predictors may exceed the sample size. Sometimes viewed as complementary, predictor selection and rank reduction are the most popular strategies for obtaining lower-dimensional approximations of the parameter matrix in such models. We show in this article that important gains in prediction accuracy can be obtained by considering them jointly. We motivate a new class of sparse multivariate regression models, in which the coefficient matrix has low rank and zero rows or can be well approximated by such a matrix. Next, we introduce estimators that are based on penalized least squares, with novel penalties that impose simultaneous row and rank restrictions on the coefficient matrix. We prove that these estimators indeed adapt to the unknown matrix sparsity and have fast rates of convergence. We support our theoretical results with an extensive simulation study and two data analyses.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/19/2013

Joint estimation of sparse multivariate regression and conditional graphical models

Multivariate regression model is a natural generalization of the classic...
research
12/17/2021

Supervised Multivariate Learning with Simultaneous Feature Auto-grouping and Dimension Reduction

Modern high-dimensional methods often adopt the "bet on sparsity" princi...
research
03/25/2014

Selective Factor Extraction in High Dimensions

This paper studies simultaneous feature selection and extraction in supe...
research
03/08/2023

Two-sided Matrix Regression

The two-sided matrix regression model Y = A^*X B^* +E aims at predicting...
research
08/06/2013

On b-bit min-wise hashing for large-scale regression and classification with sparse data

Large-scale regression problems where both the number of variables, p, a...
research
02/06/2020

Interpolation under latent factor regression models

This work studies finite-sample properties of the risk of the minimum-no...
research
02/25/2015

Sparse Multivariate Factor Regression

We consider the problem of multivariate regression in a setting where th...

Please sign up or login with your details

Forgot password? Click here to reset