2024
DOI: 10.3390/sym16040469
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Enhanced Model Predictions through Principal Components and Average Least Squares-Centered Penalized Regression

Adewale F. Lukman,
Emmanuel T. Adewuyi,
Ohud A. Alqasem
et al.

Abstract: We address the estimation of regression parameters for the ill-conditioned predictive linear model in this study. Traditional least squares methods often encounter challenges in yielding reliable results when there is multicollinearity. Therefore, we employ a better shrinkage method, average least squares-centered penalized regression (ALPR), as it offers a more efficient approach for handling multicollinearity than ridge regression. Additionally, we integrate ALPR with the principal component (PC) dimension r… Show more

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