Enveloped Huber Regression

10/30/2020
by   Le Zhou, et al.
0

Huber regression (HR) is a popular robust alternative to the least squares regression when the error follows a heavy-tailed distribution. We propose a new method called the enveloped Huber regression (EHR) by considering the envelope assumption that there exists some subspace of the predictors that has no association with the response, which is referred to as the immaterial part. More efficient estimation is achieved via the removal of the immaterial part. Different from the envelope least squares (ENV) model whose estimation is based on maximum normal likelihood, the estimation of the EHR model is through Generalized Method of Moments. The asymptotic normality of the EHR estimator is established, and it is shown that EHR is more efficient than HR. Moreover, EHR is more efficient than ENV when the error distribution is heavy-tailed, while maintaining a small efficiency loss when the error distribution is normal. Moreover, our theory also covers the heteroscedastic case in which the error may depend on the covariates. Extensive simulation studies confirm the messages from the asymptotic theory. EHR is further illustrated on a real dataset.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/12/2017

Robust Parameter Estimation of Regression Model with AR(p) Error Terms

In this paper, we consider a linear regression model with AR(p) error te...
research
01/06/2018

High Dimensional Elliptical Sliced Inverse Regression in non-Gaussian Distributions

Sliced inverse regression (SIR) is the most widely-used sufficient dimen...
research
12/23/2017

Distribution Regression

Linear regression is a fundamental and popular statistical method. There...
research
09/27/2022

Wilcoxon-type Multivariate Cluster Elastic Net

We propose a method for high dimensional multivariate regression that is...
research
06/17/2021

Distributionally Weighted Least Squares in Structural Equation Modeling

In real data analysis with structural equation modeling, data are unlike...
research
08/18/2019

Semiparametric Expectile Regression for High-dimensional Heavy-tailed and Heterogeneous Data

Recently, high-dimensional heterogeneous data have attracted a lot of at...
research
12/14/2022

Robust Distributional Regression with Automatic Variable Selection

Datasets with extreme observations and/or heavy-tailed error distributio...

Please sign up or login with your details

Forgot password? Click here to reset