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A computational approach for full nonparametric Bayesian inference under Dirichlet process mixture models

Publication ,  Journal Article
Gelfand, AE; Kottas, A
Published in: Journal of Computational and Graphical Statistics
August 26, 2002

Widely used parametric generalized linear models are, unfortunately, a somewhat limited class of specifications. Nonparametric aspects are often introduced to enrich this class, resulting in semiparametric models. Focusing on single or k-sample problems, many classical nonparametric approaches are limited to hypothesis testing. Those that allow estimation are limited to certain functionals of the underlying distributions. Moreover, the associated inference often relies upon asymptotics when nonparametric specifications are often most appealing for smaller sample sizes. Bayesian nonparametric approaches avoid asymptotics but have, to date, been limited in the range of inference. Working with Dirichlet process priors, we overcome the limitations of existing simulation-based model fitting approaches which yield inference that is confined to posterior moments of linear functionals of the population distribution. This article provides a computational approach to obtain the entire posterior distribution for more general functionals. We illustrate with three applications: Investigation of extreme value distributions associated with a single population, comparison of medians in a k-sample problem, and comparison of survival times from different populations under fairly heavy censoring.

Duke Scholars

Published In

Journal of Computational and Graphical Statistics

DOI

ISSN

1061-8600

Publication Date

August 26, 2002

Volume

11

Issue

2

Start / End Page

289 / 305

Related Subject Headings

  • Statistics & Probability
  • 4905 Statistics
  • 1403 Econometrics
  • 0104 Statistics
 

Citation

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Gelfand, A. E., & Kottas, A. (2002). A computational approach for full nonparametric Bayesian inference under Dirichlet process mixture models. Journal of Computational and Graphical Statistics, 11(2), 289–305. https://doi.org/10.1198/106186002760180518
Gelfand, A. E., and A. Kottas. “A computational approach for full nonparametric Bayesian inference under Dirichlet process mixture models.” Journal of Computational and Graphical Statistics 11, no. 2 (August 26, 2002): 289–305. https://doi.org/10.1198/106186002760180518.
Gelfand AE, Kottas A. A computational approach for full nonparametric Bayesian inference under Dirichlet process mixture models. Journal of Computational and Graphical Statistics. 2002 Aug 26;11(2):289–305.
Gelfand, A. E., and A. Kottas. “A computational approach for full nonparametric Bayesian inference under Dirichlet process mixture models.” Journal of Computational and Graphical Statistics, vol. 11, no. 2, Aug. 2002, pp. 289–305. Scopus, doi:10.1198/106186002760180518.
Gelfand AE, Kottas A. A computational approach for full nonparametric Bayesian inference under Dirichlet process mixture models. Journal of Computational and Graphical Statistics. 2002 Aug 26;11(2):289–305.
Journal cover image

Published In

Journal of Computational and Graphical Statistics

DOI

ISSN

1061-8600

Publication Date

August 26, 2002

Volume

11

Issue

2

Start / End Page

289 / 305

Related Subject Headings

  • Statistics & Probability
  • 4905 Statistics
  • 1403 Econometrics
  • 0104 Statistics