Jointness In Bayesian Variable Selection With Applications To Growth Regression / Ley, Eduardo
The authors present a measure of jointness to explore dependence among regressors in the context of Bayesian model selection. The jointness measure they propose equals the posterior odds ratio between those models that include a set of variables and the models that only include proper subsets. They...
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| Autores principales: | Ley, Eduardo |
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| Otros Autores: | Steel, Mark F. J. |
| Formato: | Online-Resource |
| Lenguaje: | English |
| Publicado: | Washington, D.C : The World Bank, 2006 |
| Materias: | |
| Acceso en línea: | URL des Erstveröffentlichers |
| Sumario: | The authors present a measure of jointness to explore dependence among regressors in the context of Bayesian model selection. The jointness measure they propose equals the posterior odds ratio between those models that include a set of variables and the models that only include proper subsets. They show its application in cross-country growth regressions using two data-sets from the model-averaging growth literature |
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| Descripción Física: | 1 Online-Ressource (17 Seiten) |