Open Access
July 2021 Ridge parameters optimization based on minimizing model selection criterion in multivariate generalized ridge regression
Mineaki Ohishi
Hiroshima Math. J. 51(2): 177-226 (July 2021). DOI: 10.32917/h2020104

Abstract

A multivariate generalized ridge (MGR) regression provides a shrinkage estimator of the multivariate linear regression by multiple ridge parameters. Since the ridge parameters which adjust the amount of shrinkage of the estimator are unknown, their optimization is an important task to obtain a better estimator. For the univariate case, a fast algorithm has been proposed for optimizing ridge parameters based on minimizing a model selection criterion (MSC) and the algorithm can be applied to various MSCs. In this paper, we extend this algorithm to MGR regression. We also describe the relationship between the MGR estimator which is not sparse and a multivariate adaptive group Lasso estimator which is sparse, under orthogonal explanatory variables.

Citation

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Mineaki Ohishi. "Ridge parameters optimization based on minimizing model selection criterion in multivariate generalized ridge regression." Hiroshima Math. J. 51 (2) 177 - 226, July 2021. https://doi.org/10.32917/h2020104

Information

Received: 28 October 2020; Revised: 13 January 2021; Published: July 2021
First available in Project Euclid: 12 July 2021

MathSciNet: MR4285842
zbMATH: 1473.62252
Digital Object Identifier: 10.32917/h2020104

Subjects:
Primary: 62J07
Secondary: 62H12

Keywords: Adaptive group Lasso regression , Generalized ridge regression , model selection criterion , Multivariate analysis , Ridge parameters optimization , Sparsity

Rights: Copyright © 2021 Hiroshima University, Mathematics Program

Vol.51 • No. 2 • July 2021
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