Pre-processing with Orthogonal Decompositions for High-dimensional Explanatory Variables

06/16/2021
by   Xu Han, et al.
0

Strong correlations between explanatory variables are problematic for high-dimensional regularized regression methods. Due to the violation of the Irrepresentable Condition, the popular LASSO method may suffer from false inclusions of inactive variables. In this paper, we propose pre-processing with orthogonal decompositions (PROD) for the explanatory variables in high-dimensional regressions. The PROD procedure is constructed based upon a generic orthogonal decomposition of the design matrix. We demonstrate by two concrete cases that the PROD approach can be effectively constructed for improving the performance of high-dimensional penalized regression. Our theoretical analysis reveals their properties and benefits for high-dimensional penalized linear regression with LASSO. Extensive numerical studies with simulations and data analysis show the promising performance of the PROD.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/10/2019

A Survey of Tuning Parameter Selection for High-dimensional Regression

Penalized (or regularized) regression, as represented by Lasso and its v...
research
07/21/2023

Statistical analysis for a penalized EM algorithm in high-dimensional mixture linear regression model

The expectation-maximization (EM) algorithm and its variants are widely ...
research
05/16/2020

Nested Model Averaging on Solution Path for High-dimensional Linear Regression

We study the nested model averaging method on the solution path for a hi...
research
08/01/2016

Oracle Inequalities for High-dimensional Prediction

The abundance of high-dimensional data in the modern sciences has genera...
research
02/29/2016

High-Dimensional L_2Boosting: Rate of Convergence

Boosting is one of the most significant developments in machine learning...
research
02/17/2022

Pattern recovery and signal denoising by SLOPE when the design matrix is orthogonal

Sorted ℓ_1 Penalized Estimator (SLOPE) is a relatively new convex regula...
research
08/23/2019

On the asymptotic properties of SLOPE

Sorted L-One Penalized Estimator (SLOPE) is a relatively new convex opti...

Please sign up or login with your details

Forgot password? Click here to reset