International Journal of Science and Mathematics Education
Vol. 1 No. 3 (2024): September : International Journal of Science and Mathematics Education

Elastic Net Principal Component Regression With an Application

Afraa A. Hamada (Unknown)



Article Info

Publish Date
25 Sep 2024

Abstract

To overcome the difficulties of high-dimensional data, Elastic Net Principal Component Regression (ENPCR), a potent statistical technique, combines Elastic Net regularization with Principal Component regression (PCR). When dealing with Multicollinearity among predictors, this method is especially helpful because it enables efficient variable selection while preserving interpretability. PCA is initially used in ENPCR to reduce the dataset's dimensionality by converting correlated variables into a group of uncorrelated principal components. The Elastic Net regression model then uses these elements as inputs and penalizes the regression coefficients using both L1 and L2 penalties. By promoting sparsity, this dual regularization lessens overfitting and helps the model concentrate on its most important components. simulated studies and Real datasets are used to demonstrate the our proposed method .

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Journal Info

Abbrev

IJSME

Publisher

Subject

Education Mathematics Social Sciences

Description

This journal is a peer-reviewed and open access journal of Mathematics and Science Education. The fields of study in this journal include the sub-family of Mathematics and Science ...