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Models for discrete longitudinal data / Geert Molenberghs, Geert Verbeke.

By: Molenberghs, GeertContributor(s): Verbeke, GeertMaterial type: TextTextLanguage: English Series: Springer series in statisticsPublication details: New York ; London : Springer, c2006. Description: xxii, 683 p. : ill. 25 cmISBN: 0387251448 (hbk.); 9780387251448Subject(s): Multivariate analysis | Longitudinal methodDDC classification: 519.53 LOC classification: QA278 | .M65 2005Online resources: Publisher description | WorldCat details | Ebook Fulltext
Contents:
TOC Introduction -- Motivating studies -- Generalized linear models -- Linear mixed models for Gaussian longitudinal data -- Model families -- The strength of marginal models -- Likelihood-based marginal models -- Generalized estimating equations -- Pseudo-likelihood -- Fitting marginal models with SAS -- Conditional models -- Pseudo-likehood -- From subject-specific to random-effects models -- The generalized linear mixed model (GLMM) -- Fitting generalized linear mixed models with SAS -- Marginal versus random-effects models The analgesic trial -- Ordinal data -- The epilepsy data -- Non-linear models -- Pseudo-likelihood for a hierarchical model -- Random-effects models with serial correlation -- Non-Gaussian random effects -- Joint continuous and discrete responses -- High-dimensional joint models -- Missing data concepts -- Simple methods, direct likelihood, and WGEE -- Multiple imputation and the EM algorithm -- Selection models -- Pattern-mixture models -- Sensitivity analysis -- Incomplete data and SAS.
Summary: Summary: The linear mixed model is the main parametric tool for the analysis of continuous longitudinal data. This book shows how the different approaches can be implemented within the SAS software package.
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Item type Current library Collection Call number Copy number Status Date due Barcode Item holds
E-Book E-Book Dr. S. R. Lasker Library, EWU
E-book
Non-fiction 519.53 MOM 2006 (Browse shelf(Opens below)) Not for loan
Text Text Dr. S. R. Lasker Library, EWU
Reserve Section
Non-fiction 519.53 MOM 2006 (Browse shelf(Opens below)) C-1 Not For Loan 26628
Text Text Dr. S. R. Lasker Library, EWU
Circulation Section
Non-fiction 519.53 MOM 2006 (Browse shelf(Opens below)) C-2 Available 26884
Text Text Dr. S. R. Lasker Library, EWU
Circulation Section
Non-fiction 519.53 MOM 2006 (Browse shelf(Opens below)) C-3 Available 26885
Total holds: 0

Includes bibliographical references and index.

TOC Introduction --
Motivating studies --
Generalized linear models --
Linear mixed models for Gaussian longitudinal data --
Model families --
The strength of marginal models --
Likelihood-based marginal models --
Generalized estimating equations --
Pseudo-likelihood --
Fitting marginal models with SAS --
Conditional models --
Pseudo-likehood --
From subject-specific to random-effects models --
The generalized linear mixed model (GLMM) --
Fitting generalized linear mixed models with SAS --
Marginal versus random-effects models The analgesic trial --
Ordinal data --
The epilepsy data --
Non-linear models --
Pseudo-likelihood for a hierarchical model --
Random-effects models with serial correlation --
Non-Gaussian random effects --
Joint continuous and discrete responses --
High-dimensional joint models --
Missing data concepts --
Simple methods, direct likelihood, and WGEE --
Multiple imputation and the EM algorithm --
Selection models --
Pattern-mixture models --
Sensitivity analysis --
Incomplete data and SAS.

Summary:
The linear mixed model is the main parametric tool for the analysis of continuous longitudinal data. This book shows how the different approaches can be implemented within the SAS software package.

AS

Saifun Momota

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