1 Department of Statistics, School of Science and Computer Studies, The Federal Polytechnic Ado-Ekiti, Ekiti state, Nigeria.
2 Department of Statistics, School of Physical Science, The Federal University of Technology, Akure, Ondostate, Nigeria.
World Journal of Advanced Research and Reviews, 2025, 27(01), 942-957
Article DOI: 10.30574/wjarr.2025.27.1.2559
Received on 27 May 2025; revised on 05 July 2025; accepted on 07 July 2025
This study tackles the persistent issue of multicollinearity in Gaussian linear regression which undermines the efficiency of Ordinary Least Squares (OLS) estimators. While Ridge Regression and Principal Component Analysis (PCA) are common remedies, they have limitations in terms of bias control and interpretability. To address this, the research proposes hybrid Ridge – PCA estimators using four newly developed ridge parameters combined with PCA. A Monte Carlo simulation evaluated 21 estimators including OLS, Ridge, PCA, and Liu estimators under varying sample sizes, error variances and multicollinearity levels using Mean Squared Error (MSE) as the performance metric. Results show that a newly hybrid estimator consistently outperformed other proposed and existing estimators by achieving the lowest MSE. The study demonstrates the strength of integrating regularization with dimensionality reduction to improve regression under multicollinearity.
Multicollinearity; Ridge Regression; Principal Component Estimator; Hybrid Estimators; Monte Carlo Simulation
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Remilekun Enitan Alabi, Olatayo Olusegun Alabi and Oluwadare O. Ojo. Development of hybrid ridge–PCA estimators for addressing Multicollinearity in Gaussian linear regression models. World Journal of Advanced Research and Reviews, 2025, 27(01), 942-957. Article DOI: https://doi.org/10.30574/wjarr.2025.27.1.2559.
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