Open Access
March 2013 Selection of model selection criteria for multivariate ridge regression
Isamu Nagai
Hiroshima Math. J. 43(1): 73-106 (March 2013). DOI: 10.32917/hmj/1368217951

Abstract

In the present study, we consider the selection of model selection criteria for multivariate ridge regression. There are several model selection criteria for selecting the ridge parameter in multivariate ridge regression, e.g., the $C_p$ criterion and the modified $C_p$ ($MC_p$) criterion. We propose the generalized $C_p$ ($GC_p$) criterion, which includes $C_p$ and $MC_p$ criteria as special cases. The $GC_p$ criterion is specified by a non-negative parameter $\lambda$, which is referred to as the penalty parameter. We attempt to select an optimal penalty parameter such that the predicted mean square error (PMSE) of the predictor of ridge regression after optimizing the ridge parameter is minimized. Through numerical experiments, we verify that the proposed optimization methods exhibit better performance than conventional optimization methods, i.e., optimizing only the ridge parameter by minimizing the $C_p$ or $MC_p$ criterion.

Citation

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Isamu Nagai. "Selection of model selection criteria for multivariate ridge regression." Hiroshima Math. J. 43 (1) 73 - 106, March 2013. https://doi.org/10.32917/hmj/1368217951

Information

Published: March 2013
First available in Project Euclid: 10 May 2013

zbMATH: 1348.62207
MathSciNet: MR3066526
Digital Object Identifier: 10.32917/hmj/1368217951

Subjects:
Primary: 62J07
Secondary: 62H12

Keywords: asymptotic expansion , generalized $C_p$ criterion , model selection criterion , multivariate linear regression model , Ridge regression , selection of the model selection criterion

Rights: Copyright © 2013 Hiroshima University, Mathematics Program

Vol.43 • No. 1 • March 2013
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