Content area

Abstract

Markov chain Monte Carlo (MCMC) algorithms offer a very general approach for sampling from arbitrary distributions. However, designing and tuning MCMC algorithms for each new distribution can be challenging and time consuming. It is particularly difficult to create an efficient sampler when there is strong dependence among the variables in a multivariate distribution. We describe a two-pronged approach for constructing efficient, automated MCMC algorithms: (1) we propose the "factor slice sampler," a generalization of the univariate slice sampler where we treat the selection of a coordinate basis (factors) as an additional tuning parameter, and (2) we develop an approach for automatically selecting tuning parameters to construct an efficient factor slice sampler. In addition to automating the factor slice sampler, our tuning approach also applies to the standard univariate slice samplers. We demonstrate the efficiency and general applicability of our automated MCMC algorithm with a number of illustrative examples. [PUBLICATION ABSTRACT]

Details

10000008
Business indexing term
Title
Automated Factor Slice Sampling
Volume
23
Issue
2
First page
543
Publication year
2014
Publication date
2014
Publisher
Taylor & Francis Ltd.
Place of publication
Alexandria
Country of publication
United Kingdom
Publication subject
ISSN
10618600
e-ISSN
15372715
Source type
Scholarly Journal
Language of publication
English
Document type
Feature
ProQuest document ID
1523935349
Document URL
https://www.proquest.com/scholarly-journals/automated-factor-slice-sampling/docview/1523935349/se-2?accountid=208611
Copyright
Copyright American Statistical Association 2014
Last updated
2024-11-23
Database
ProQuest One Academic