The efficiency of modified jackknife and ridge type regression estimators: a comparison

A common problem in multiple regression models is multicollinearity, which produces undesirable effects on the least squares estimator. To circumvent this problem, two well known estimation procedures are often suggested in the literature. They are Generalized Ridge Regression (GRR) estimation sugge...

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Main Authors: Sharad Damodar Gore, Thekke Variyam Ramanathan, Feras Shaker Mahmood Batah
Format: Article
Language:English
Published: University Constantin Brancusi of Targu-Jiu 2008-09-01
Series:Surveys in Mathematics and its Applications
Subjects:
Online Access:http://www.utgjiu.ro/math/sma/v03/p06.pdf
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spelling doaj-9f9844d9b1ca4789a0f59de75167ed212020-11-24T22:52:53ZengUniversity Constantin Brancusi of Targu-JiuSurveys in Mathematics and its Applications1843-72651842-62982008-09-013 (2008)111122The efficiency of modified jackknife and ridge type regression estimators: a comparisonSharad Damodar GoreThekke Variyam RamanathanFeras Shaker Mahmood BatahA common problem in multiple regression models is multicollinearity, which produces undesirable effects on the least squares estimator. To circumvent this problem, two well known estimation procedures are often suggested in the literature. They are Generalized Ridge Regression (GRR) estimation suggested by Hoerl and Kennard iteb8 and the Jackknifed Ridge Regression (JRR) estimation suggested by Singh et al. iteb13. The GRR estimation leads to a reduction in the sampling variance, whereas, JRR leads to a reduction in the bias. In this paper, we propose a new estimator namely, Modified Jackknife Ridge Regression Estimator (MJR). It is based on the criterion that combines the ideas underlying both the GRR and JRR estimators. We have investigated standard properties of this new estimator. From a simulation study, we find that the new estimator often outperforms the LASSO, and it is superior to both GRR and JRR estimators, using the mean squared error criterion. The conditions under which the MJR estimator is better than the other two competing estimators have been investigated.http://www.utgjiu.ro/math/sma/v03/p06.pdfGeneralized Ridge RegressionJackknifed Ridge RegressionMean Squared ErrorModified Jackknife Ridge RegressionMulticollinearity
collection DOAJ
language English
format Article
sources DOAJ
author Sharad Damodar Gore
Thekke Variyam Ramanathan
Feras Shaker Mahmood Batah
spellingShingle Sharad Damodar Gore
Thekke Variyam Ramanathan
Feras Shaker Mahmood Batah
The efficiency of modified jackknife and ridge type regression estimators: a comparison
Surveys in Mathematics and its Applications
Generalized Ridge Regression
Jackknifed Ridge Regression
Mean Squared Error
Modified Jackknife Ridge Regression
Multicollinearity
author_facet Sharad Damodar Gore
Thekke Variyam Ramanathan
Feras Shaker Mahmood Batah
author_sort Sharad Damodar Gore
title The efficiency of modified jackknife and ridge type regression estimators: a comparison
title_short The efficiency of modified jackknife and ridge type regression estimators: a comparison
title_full The efficiency of modified jackknife and ridge type regression estimators: a comparison
title_fullStr The efficiency of modified jackknife and ridge type regression estimators: a comparison
title_full_unstemmed The efficiency of modified jackknife and ridge type regression estimators: a comparison
title_sort efficiency of modified jackknife and ridge type regression estimators: a comparison
publisher University Constantin Brancusi of Targu-Jiu
series Surveys in Mathematics and its Applications
issn 1843-7265
1842-6298
publishDate 2008-09-01
description A common problem in multiple regression models is multicollinearity, which produces undesirable effects on the least squares estimator. To circumvent this problem, two well known estimation procedures are often suggested in the literature. They are Generalized Ridge Regression (GRR) estimation suggested by Hoerl and Kennard iteb8 and the Jackknifed Ridge Regression (JRR) estimation suggested by Singh et al. iteb13. The GRR estimation leads to a reduction in the sampling variance, whereas, JRR leads to a reduction in the bias. In this paper, we propose a new estimator namely, Modified Jackknife Ridge Regression Estimator (MJR). It is based on the criterion that combines the ideas underlying both the GRR and JRR estimators. We have investigated standard properties of this new estimator. From a simulation study, we find that the new estimator often outperforms the LASSO, and it is superior to both GRR and JRR estimators, using the mean squared error criterion. The conditions under which the MJR estimator is better than the other two competing estimators have been investigated.
topic Generalized Ridge Regression
Jackknifed Ridge Regression
Mean Squared Error
Modified Jackknife Ridge Regression
Multicollinearity
url http://www.utgjiu.ro/math/sma/v03/p06.pdf
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