| Literature DB >> 23645935 |
Yeonseung Chung1, David B Dunson.
Abstract
As a generalization of the Dirichlet process (DP) to allow predictor dependence, we propose a local Dirichlet process (lDP). The lDP provides a prior distribution for a collection of random probability measures indexed by predictors. This is accomplished by assigning stick-breaking weights and atoms to random locations in a predictor space. The probability measure at a given predictor value is then formulated using the weights and atoms located in a neighborhood about that predictor value. This construction results in a marginal DP prior for the random measure at any specific predictor value. Dependence is induced through local sharing of random components. Theoretical properties are considered and a blocked Gibbs sampler is proposed for posterior computation in lDP mixture models. The methods are illustrated using simulated examples and an epidemiologic application.Entities:
Keywords: Blocked Gibbs sampler; Dependent Dirichlet process; Mixture model; Non-parametric Bayes; Stick-breaking representation
Year: 2011 PMID: 23645935 PMCID: PMC3640338 DOI: 10.1007/s10463-008-0218-9
Source DB: PubMed Journal: Ann Inst Stat Math ISSN: 0020-3157 Impact factor: 1.267