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Main Authors: Womack, Andrew J, Taylor-Rodriguez, Daniel, Fuentes, Claudio
Format: Preprint
Published: 2015
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Online Access:https://arxiv.org/abs/1511.04745
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author Womack, Andrew J
Taylor-Rodriguez, Daniel
Fuentes, Claudio
author_facet Womack, Andrew J
Taylor-Rodriguez, Daniel
Fuentes, Claudio
contents This paper introduces a general and principled construction of model space priors with a focus on regression problems. The proposed formulation regards each model as a `local` null hypothesis whose alternatives are the set of models that nest it. Assuming constant odds between any `local` null and its alternatives provides a natural isomorphism of model spaces (like a matryoshka doll), constituting an intuitive way to correct for test multiplicity. This isomorphism yields the Poisson distribution as the unique limiting distribution over model dimension under mild assumptions. We compare this model space prior theoretically and in simulations to widely adopted Beta-Binomial constructions. We show that the proposed prior yields a `just-right` multiplicity correction that induces a desirable complexity penalization profile.
format Preprint
id arxiv_https___arxiv_org_abs_1511_04745
institution arXiv
publishDate 2015
record_format arxiv
spellingShingle The matryoshka doll prior: principled multiplicity correction in Bayesian model comparison
Womack, Andrew J
Taylor-Rodriguez, Daniel
Fuentes, Claudio
Methodology
This paper introduces a general and principled construction of model space priors with a focus on regression problems. The proposed formulation regards each model as a `local` null hypothesis whose alternatives are the set of models that nest it. Assuming constant odds between any `local` null and its alternatives provides a natural isomorphism of model spaces (like a matryoshka doll), constituting an intuitive way to correct for test multiplicity. This isomorphism yields the Poisson distribution as the unique limiting distribution over model dimension under mild assumptions. We compare this model space prior theoretically and in simulations to widely adopted Beta-Binomial constructions. We show that the proposed prior yields a `just-right` multiplicity correction that induces a desirable complexity penalization profile.
title The matryoshka doll prior: principled multiplicity correction in Bayesian model comparison
topic Methodology
url https://arxiv.org/abs/1511.04745