Missing Data in Longitudinal Studies

Regular price €112.99
A01=Joseph W. Hogan
A01=Michael J. Daniels
Author_Joseph W. Hogan
Author_Michael J. Daniels
Bayesian inference
Bivariate Normals
Category=PBT
CD4 Count
covariance modeling
Credible Intervals
Data Augmentation
Dropout Time
eq_isMigrated=1
eq_isMigrated=2
Full Conditional Distributions
Full Data Distribution
Full Data Likelihood
Full Data Model
longitudinal studies
Markov chain Monte Carlo
MCMC Algorithm
MCMC Sample
Missing Data
Missing Data Mechanism
Multivariate Normal Model
Multivariate Probit Model
Observed Data Distribution
Observed Data Likelihood
Pattern Mixture Models
Point Mass Priors
Posterior Predictive Distribution
regression models
Schizophrenia Trial
selection bias
Selection Models
Semiparametric Selection Models
sensitivity analysis
Sensitivity Parameters
Shared Parameter Models

Product details

  • ISBN 9781584886099
  • Weight: 640g
  • Dimensions: 156 x 234mm
  • Publication Date: 11 Mar 2008
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Drawing from the authors’ own work and from the most recent developments in the field, Missing Data in Longitudinal Studies: Strategies for Bayesian Modeling and Sensitivity Analysis describes a comprehensive Bayesian approach for drawing inference from incomplete data in longitudinal studies. To illustrate these methods, the authors employ several data sets throughout that cover a range of study designs, variable types, and missing data issues.

The book first reviews modern approaches to formulate and interpret regression models for longitudinal data. It then discusses key ideas in Bayesian inference, including specifying prior distributions, computing posterior distribution, and assessing model fit. The book carefully describes the assumptions needed to make inferences about a full-data distribution from incompletely observed data. For settings with ignorable dropout, it emphasizes the importance of covariance models for inference about the mean while for nonignorable dropout, the book studies a variety of models in detail. It concludes with three case studies that highlight important features of the Bayesian approach for handling nonignorable missingness.

With suggestions for further reading at the end of most chapters as well as many applications to the health sciences, this resource offers a unified Bayesian approach to handle missing data in longitudinal studies.

Michael J. Daniels, Joseph W. Hogan