Prior Density Selection as a Particular Case of Bayesian Model Selection: A Predictive Approach |
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Authors: | Julián de la Horra María Teresa Rodríguez-Bernal |
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Affiliation: | 1. Departamento de Matemáticas , Universidad Autónoma de Madrid , Madrid , Spain julian.delahorra@uam.es;3. Departamento de Matemáticas , Universidad Autónoma de Madrid , Madrid , Spain |
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Abstract: | A Bayesian model consists of two elements: a sampling model and a prior density. The problem of selecting a prior density is nothing but the problem of selecting a Bayesian model where the sampling model is fixed. A predictive approach is used through a decision problem where the loss function is the squared L 2 distance between the sampling density and the posterior predictive density, because the aim of the method is to choose the prior that provides a posterior predictive density as good as possible. An algorithm is developed for solving the problem; this algorithm is based on Lavine's linearization technique. |
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Keywords: | Bayesian model selection Lavine's linearization technique L 2 distance Posterior expected loss Posterior predictive density Prior density selection |
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