Elastic Net Regression with the Value of the L2 Penalty Parameter Associated with Bayesian Analysis
Keywords:
Bayes factor, Bayesian analysis, elastic net, L2 penalty, shrinkageAbstract
The aim of this article is to propose the method for choosing the value of the L2 penalty parameter, , of elastic net linear regression model using Bayesian analysis. The value of is specified through the behavior of Bayes factor. We study the performance of elastic net estimators where the value of is based on Bayes factor and the value of is chosen by 10-fold cross-validation method. Simulation studies and real data examples show that the elastic net estimator where the value of is based on Bayes factor performs better in prediction accuracy.
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Published
2015-07-30
How to Cite
Jiratchayut, K., & Bumrungsup, C. (2015). Elastic Net Regression with the Value of the L2 Penalty Parameter Associated with Bayesian Analysis. Thailand Statistician, 13(2), 243–269. Retrieved from https://ph02.tci-thaijo.org/index.php/thaistat/article/view/37775
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