414201

A New Biased Estimation Class to Combat the Multicollinearity in Regression Models: Modified Two--Parameter Liu Estimator

Article

Last updated: 09 Mar 2025

Subjects

-

Tags

Applied Statistics and Econometrics

Abstract

The multicollinearity problem occurrence of the explanatory variables affects the least-squares (LS) estimator seriously in the regression models. The multicollinearity adverse effects on the LS estimation are also investigated by many authors. Instead of the LS estimator, we propose a new modified two–parameter Liu (MTPL) estimator to handle the multicollinearity for the regression model based on two shrinkage parameters (k, d). Also, we give the necessary and
sufficient conditions for the outperforming of the proposed MTPL estimator over the LS, ridge, Liu, Kibria-Lukman (KL), modified ridge type (MRT), and modified one–parameter Liu (MOPL) estimators by the scalar mean squared error (MSE) criterion. Optimal biasing parameters of the proposed MTPL estimator are derived. Simulation and real data are used to study the efficiency of the MTPL estimator. The results of the simulation study and two real-life applications show the
superiority of the proposed estimator because the MSE of the proposed estimator is smaller than the other estimators.

DOI

10.21608/cjmss.2025.347818.1096

Keywords

Company Efficiency, Kibria-Lukman estimator, Liu estimator, Modified ridge type estimator, Monte Carlo simulation

Authors

First Name

Mohamed Reda

Last Name

Abonazel

MiddleName

-

Affiliation

Department of applied statistics and Econometrics, Faculty of Graduate Studies for Statistical Research, Cairo Uniersity, Giza 12613, Egypt

Email

mabonazel@cu.edu.eg

City

-

Orcid

orcid.org/0000-0001-

Volume

4

Article Issue

1

Related Issue

50936

Issue Date

2025-04-01

Receive Date

2024-12-26

Publish Date

2025-04-01

Page Start

316

Page End

347

Print ISSN

2974-3435

Online ISSN

2974-3443

Link

https://cjmss.journals.ekb.eg/article_414201.html

Detail API

http://journals.ekb.eg?_action=service&article_code=414201

Order

414,201

Type

Original Article

Type Code

2,545

Publication Type

Journal

Publication Title

Computational Journal of Mathematical and Statistical Sciences

Publication Link

https://cjmss.journals.ekb.eg/

MainTitle

A New Biased Estimation Class to Combat the Multicollinearity in Regression Models: Modified Two--Parameter Liu Estimator

Details

Type

Article

Created At

09 Mar 2025