Bayesian Missing Data Problems

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A01=Guo-Liang Tian
A01=Kai Wang Ng
A01=Ming T. Tan
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Age Group_Uncategorized
Ascent Property
Author_Guo-Liang Tian
Author_Kai Wang Ng
Author_Ming T. Tan
automatic-update
Bayes Factor
Category1=Non-Fiction
Category=PBT
Category=PS
complete
Complete Data Posterior Distribution
conditional
Conditional Expectations
Conditional Predictive Distribution
COP=United Kingdom
DA Algorithm
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density
distribution
ECM Algorithm
Em Algorithm
EM-type Algorithm
eq_isMigrated=2
eq_non-fiction
eq_science
gibbs
Gibbs Sampler
IBF
Importance Sampling
Importance Sampling Estimator
Language_English
MCMC Method
Missing Data
Missing Data Mechanism
Mm Algorithm
mode
Observed Data Likelihood Function
Observed Data Yobs
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posterior
Posterior Densities
Posterior Distribution
Posterior Mode
Posterior Samples
predictive
Price_€50 to €100
PS=Active
RR Model
sampler
samples
softlaunch
Zip Distribution

Product details

  • ISBN 9780367385309
  • Weight: 453g
  • Dimensions: 156 x 234mm
  • Publication Date: 04 Nov 2019
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
  • Language: English
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Bayesian Missing Data Problems: EM, Data Augmentation and Noniterative Computation presents solutions to missing data problems through explicit or noniterative sampling calculation of Bayesian posteriors. The methods are based on the inverse Bayes formulae discovered by one of the author in 1995. Applying the Bayesian approach to important real-world problems, the authors focus on exact numerical solutions, a conditional sampling approach via data augmentation, and a noniterative sampling approach via EM-type algorithms.

After introducing the missing data problems, Bayesian approach, and posterior computation, the book succinctly describes EM-type algorithms, Monte Carlo simulation, numerical techniques, and optimization methods. It then gives exact posterior solutions for problems, such as nonresponses in surveys and cross-over trials with missing values. It also provides noniterative posterior sampling solutions for problems, such as contingency tables with supplemental margins, aggregated responses in surveys, zero-inflated Poisson, capture-recapture models, mixed effects models, right-censored regression model, and constrained parameter models. The text concludes with a discussion on compatibility, a fundamental issue in Bayesian inference.

This book offers a unified treatment of an array of statistical problems that involve missing data and constrained parameters. It shows how Bayesian procedures can be useful in solving these problems.

Ming T. Tan is Professor of Biostatistics in the Department of Epidemiology and Preventive Medicine at the University of Maryland School of Medicine and Director of the Division of Biostatistics at the University of Maryland Greenebaum Cancer Center.

Guo-Liang Tian is Associate Professor in the Department of Statistics and Actuarial Science at the University of Hong Kong.

Kai Wang Ng is Professor and Head of the Department of Statistics and Actuarial Science at the University of Hong Kong.