| Literature DB >> 25071298 |
Suprateek Kundu1, David B Dunson2.
Abstract
There is a rich literature on Bayesian variable selection for parametric models. Our focus is on generalizing methods and asymptotic theory established for mixtures of g-priors to semiparametric linear regression models having unknown residual densities. Using a Dirichlet process location mixture for the residual density, we propose a semiparametric g-prior which incorporates an unknown matrix of cluster allocation indicators. For this class of priors, posterior computation can proceed via a straightforward stochastic search variable selection algorithm. In addition, Bayes factor and variable selection consistency is shown to result under a class of proper priors on g even when the number of candidate predictors p is allowed to increase much faster than sample size n, while making sparsity assumptions on the true model size.Entities:
Keywords: Asymptotic theory; Bayes factor; Large p; Model selection; Posterior consistency; Stochastic search variable selection; Subset selection; g-prior; small n
Year: 2014 PMID: 25071298 PMCID: PMC4111209 DOI: 10.1080/01621459.2014.881153
Source DB: PubMed Journal: J Am Stat Assoc ISSN: 0162-1459 Impact factor: 5.033