arXiv:1203.4326 [stat.ME]AbstractReferencesReviewsResources
Selection of tuning parameters in bridge regression models via Bayesian information criterion
Published 2012-03-20, updated 2012-04-14Version 3
We consider the bridge linear regression modeling, which can produce a sparse or non-sparse model. A crucial point in the model building process is the selection of adjusted parameters including a regularization parameter and a tuning parameter in bridge regression models. The choice of the adjusted parameters can be viewed as a model selection and evaluation problem. We propose a model selection criterion for evaluating bridge regression models in terms of Bayesian approach. This selection criterion enables us to select the adjusted parameters objectively. We investigate the effectiveness of our proposed modeling strategy through some numerical examples.
Comments: 20 pages, 5 figures
Keywords: bayesian information criterion, tuning parameter, adjusted parameters, bridge linear regression, model selection criterion
Tags: journal article
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