Title : ( Improved robust ridge M-estimation )
Authors: M. Norouzirad , Mohammad Arashi , S.E.Ahmed ,Access to full-text not allowed by authors
Abstract
It is developed that non-sample prior information about regression vector-parameter, usually in the form of constraints, improves the risk performance of the ordinary least squares estimator (OLSE) when it is shrunken. However, in practice, it may happen that both multicollinearity and outliers exist simultaneously in the data. In such a situation, the use of robust ridge estimator is suggested to overcome the undesirable effects of the OLSE. In this article, some prior information in the form of constraints is employed to improve the performance of this estimator in the multiple regression model. In this regard, shrinkage ridge robust estimators are defined. Advantages of the proposed estimators over the usual robust ridge estimator are also investigated using Monte-Carlo simulation as well as a real data example.
Keywords
, M-estimation, multicollinearity, non-sample information, outliers, ridge regression, shrinkage@article{paperid:1081570,
author = {M. Norouzirad and Arashi, Mohammad and S.E.Ahmed},
title = {Improved robust ridge M-estimation},
journal = {Journal of Statistical Computation and Simulation},
year = {2017},
volume = {87},
number = {18},
month = {December},
issn = {0094-9655},
pages = {3469--3490},
numpages = {21},
keywords = {M-estimation; multicollinearity; non-sample information; outliers; ridge regression; shrinkage},
}
%0 Journal Article
%T Improved robust ridge M-estimation
%A M. Norouzirad
%A Arashi, Mohammad
%A S.E.Ahmed
%J Journal of Statistical Computation and Simulation
%@ 0094-9655
%D 2017