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A method for combining inference across related nonparametric Bayesian models
Authors:Peter Müller  Fernando Quintana  Gary Rosner
Institution:University of Texas, Houston, USA;Pontificia Universidad Católica de Chile, Santiago, Chile;University of Texas, Houston, USA
Abstract:Summary.  We consider the problem of combining inference in related nonparametric Bayes models. Analogous to parametric hierarchical models, the hierarchical extension formalizes borrowing strength across the related submodels. In the nonparametric context, modelling is complicated by the fact that the random quantities over which we define the hierarchy are infinite dimensional. We discuss a formal definition of such a hierarchical model. The approach includes a regression at the level of the nonparametric model. For the special case of Dirichlet process mixtures, we develop a Markov chain Monte Carlo scheme to allow efficient implementation of full posterior inference in the given model.
Keywords:Dependence  Dirichlet process  Hierarchical model  Meta-analysis  Random functions
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