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A Gibbs sampling approach to Bayesian analysis of generalized linear models for binary data

Title
A Gibbs sampling approach to Bayesian analysis of generalized linear models for binary data
Authors
Oh M.-S.
Ewha Authors
오만숙
SCOPUS Author ID
오만숙scopus
Issue Date
1997
Journal Title
Computational Statistics
ISSN
0943-4062JCR Link
Citation
Computational Statistics vol. 12, no. 4, pp. 431 - 445
Indexed
SCIE; SCOPUS scopus
Document Type
Article
Abstract
A Monte Carlo Gibbs sampling approach is suggested for Bayesian posterior inference on unknown parameters in generalized linear models for binary data. This paper exploits the idea of Albert and Chib(1993), introducing normal latent variables into a model and connecting the binary response data with a normal linear model on continuous latent response data. Then all the full conditional distributions of unknown parameters are given by normal distributions with restrictions. Simple and accurate approximations to the restrictions are suggested so that the Gibbs sampler can be very easily implemented.
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자연과학대학 > 통계학전공 > Journal papers
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