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Generalized smooth finite mixtures
Authors:Mattias Villani  Robert Kohn  David J. Nott
Affiliation:1. Statistics Division, Department of Computer and Information Science, Linköpin University, SE-581 83 Linköping, Sweden;2. Australian School of Business, University of New South Wales, UNSW, Sydney 2052, Australia;3. Department of Statistics and Applied Probability, National University of Singapore, Singapore
Abstract:We propose a general class of models and a unified Bayesian inference methodology for flexibly estimating the density of a response variable conditional on a possibly high-dimensional set of covariates. Our model is a finite mixture of component models with covariate-dependent mixing weights. The component densities can belong to any parametric family, with each model parameter being a deterministic function of covariates through a link function. Our MCMC methodology allows for Bayesian variable selection among the covariates in the mixture components and in the mixing weights. The model’s parameterization and variable selection prior are chosen to prevent overfitting. We use simulated and real data sets to illustrate the methodology.
Keywords:Bayesian inference   Conditional distribution   GLM   Markov chain Monte Carlo   Mixture of experts   Variable selection
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