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James P. Hobert
James P. Hobert
Professor of Statistics, University of Florida
Подтвержден адрес электронной почты в домене ufl.edu
Название
Процитировано
Процитировано
Год
Maximizing generalized linear mixed model likelihoods with an automated Monte Carlo EM algorithm
JG Booth, JP Hobert
Journal of the Royal Statistical Society Series B: Statistical Methodology …, 1999
8001999
The effect of improper priors on Gibbs sampling in hierarchical linear mixed models
JP Hobert, G Casella
Journal of the American Statistical Association 91 (436), 1461-1473, 1996
6401996
Honest exploration of intractable probability distributions via Markov chain Monte Carlo
GL Jones, JP Hobert
Statistical Science, 312-334, 2001
3562001
Random‐effects modeling of categorical response data
A Agresti, JG Booth*, JP Hobert*, B Caffo*
Sociological Methodology 30 (1), 27-80, 2000
2732000
Standard errors of prediction in generalized linear mixed models
JG Booth, JP Hobert
Journal of the American Statistical Association 93 (441), 262-272, 1998
2351998
Negative binomial loglinear mixed models
JG Booth, G Casella, H Friedl, JP Hobert
Statistical Modelling 3 (3), 179-191, 2003
1672003
On the applicability of regenerative simulation in Markov chain Monte Carlo
JP Hobert, GL Jones, B Presnell, JS Rosenthal
Biometrika 89 (4), 731-743, 2002
1492002
Clustering using objective functions and stochastic search
JG Booth, G Casella, JP Hobert
Journal of the Royal Statistical Society Series B: Statistical Methodology …, 2008
1432008
Sufficient burn-in for Gibbs samplers for a hierarchical random effects model
GL Jones, JP Hobert
1412004
The Polya-Gamma Gibbs sampler for Bayesian logistic regression is uniformly ergodic
HM Choi, JP Hobert
1072013
Geometric ergodicity of Gibbs and block Gibbs samplers for a hierarchical random effects model
JP Hobert, CJ Geyer
Journal of Multivariate Analysis 67 (2), 414-430, 1998
1021998
Convergence rates and asymptotic standard errors for Markov chain Monte Carlo algorithms for Bayesian probit regression
V Roy, JP Hobert
Journal of the Royal Statistical Society Series B: Statistical Methodology …, 2007
982007
A theoretical comparison of the data augmentation, marginal augmentation and PX-DA algorithms
JP Hobert, D Marchev
942008
Functional compatibility, Markov chains, and Gibbs sampling with improper posteriors
JP Hobert, G Casella
Journal of Computational and Graphical Statistics 7 (1), 42-60, 1998
861998
A survey of Monte Carlo algorithms for maximizing the likelihood of a two-stage hierarchical model
JG Booth, JP Hobert, W Jank
Statistical Modelling 1 (4), 333-349, 2001
762001
The data augmentation algorithm: Theory and methodology
JP Hobert
Handbook of Markov Chain Monte Carlo, 253-293, 2011
592011
Geometric Ergodicity of van Dyk and Meng's Algorithm for the Multivariate Student's t Model
D Marchev, JP Hobert
Journal of the American Statistical Association 99 (465), 228-238, 2004
582004
Geometric ergodicity of the Bayesian lasso
K Khare, JP Hobert
522013
Block Gibbs sampling for Bayesian random effects models with improper priors: Convergence and regeneration
A Tan, JP Hobert
Journal of Computational and Graphical Statistics 18 (4), 861-878, 2009
522009
Hierarchical models: A current computational perspective
JP Hobert
Journal of the American Statistical Association 95 (452), 1312-1316, 2000
482000
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Статьи 1–20