Robust Variable Selection Criteria for the Penalized Regression

12/29/2019
by   Abhijit Mandal, et al.
0

We propose a robust variable selection procedure using a divergence based M-estimator combined with a penalty function. It produces robust estimates of the regression parameters and simultaneously selects the important explanatory variables. An efficient algorithm based on the quadratic approximation of the estimating equation is constructed. The asymptotic distribution and the influence function of the regression coefficients are derived. The widely used model selection procedures based on the Mallows's C_p statistic and Akaike information criterion (AIC) often show very poor performance in the presence of heavy-tailed error or outliers. For this purpose, we introduce robust versions of these information criteria based on our proposed method. The simulation studies show that the robust variable selection technique outperforms the classical likelihood-based techniques in the presence of outliers. The performance of the proposed method is also explored through the real data analysis.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/28/2011

Robust Parametric Classification and Variable Selection by a Minimum Distance Criterion

We investigate a robust penalized logistic regression algorithm based on...
research
05/03/2019

Robust Model Selection for Finite Mixture of Regression Models Through Trimming

In this article, we introduce a new variable selection technique through...
research
10/19/2016

Robust and Parallel Bayesian Model Selection

Effective and accurate model selection is an important problem in modern...
research
07/11/2018

Robust relative error estimation

Relative error estimation has been recently used in regression analysis....
research
12/14/2022

Robust Distributional Regression with Automatic Variable Selection

Datasets with extreme observations and/or heavy-tailed error distributio...
research
10/24/2021

Robust Variable Selection under Cellwise Contamination

Cellwise outliers are widespread in data and traditional robust methods ...
research
06/30/2021

Adaptively Robust Geographically Weighted Regression

We develop a new robust geographically weighted regression method in the...

Please sign up or login with your details

Forgot password? Click here to reset