Multivariate Generalized Linear Mixed Models Using R

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A01=Damon Mark Berridge
A01=Robert Crouchley
adaptive
Adaptive Quadrature
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Age Group_Uncategorized
Author_Damon Mark Berridge
Author_Robert Crouchley
automatic-update
bimary data
Binary Response
Binary Response Model
Category1=Non-Fiction
Category=JMA
Category=JMB
Category=PBT
COP=United Kingdom
count data
Cumulative Distribution Function
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Dummy Variables
effects
eq_isMigrated=2
eq_non-fiction
eq_society-politics
estimate
explanatory
Explanatory Variables
fixed effects
Generalized Linear Models
heirarchical models
Incidental Parameters
Interval Scale Data
Intraclass Correlation
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likelihood
Linear Predictor
log
Mixed Generalized Linear Model
Mixed Poisson Model
Multi-level Data
multiilevel models
Multivariate Generalized Linear Mixed Models
Ordered Response Models
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parameter
Parameter Estimates
Poisson Model
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Probit Model
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Psychological Distress Score
quadrature
random
random effects
Random Effects Model
Random Intercept
Residual Degrees
softlaunch
Times Log Likelihoods
Trade Union Membership
variables

Product details

  • ISBN 9781032922805
  • Weight: 453g
  • Dimensions: 156 x 234mm
  • Publication Date: 14 Oct 2024
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
  • Language: English
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Multivariate Generalized Linear Mixed Models Using R presents robust and methodologically sound models for analyzing large and complex data sets, enabling readers to answer increasingly complex research questions. The book applies the principles of modeling to longitudinal data from panel and related studies via the Sabre software package in R.

A Unified Framework for a Broad Class of Models The authors first discuss members of the family of generalized linear models, gradually adding complexity to the modeling framework by incorporating random effects. After reviewing the generalized linear model notation, they illustrate a range of random effects models, including three-level, multivariate, endpoint, event history, and state dependence models. They estimate the multivariate generalized linear mixed models (MGLMMs) using either standard or adaptive Gaussian quadrature. The authors also compare two-level fixed and random effects linear models. The appendices contain additional information on quadrature, model estimation, and endogenous variables, along with SabreR commands and examples.

Improve Your Longitudinal StudyIn medical and social science research, MGLMMs help disentangle state dependence from incidental parameters. Focusing on these sophisticated data analysis techniques, this book explains the statistical theory and modeling involved in longitudinal studies. Many examples throughout the text illustrate the analysis of real-world data sets. Exercises, solutions, and other material are available on a supporting website.

Damon M. Berridge is a senior lecturer in the Department of Mathematics and Statistics at Lancaster University. Dr. Berridge has nearly 20 years of experience as a statistical consultant. His research focuses on the modeling of binary and ordinal recurrent events through random effects models, with application in medical and social statistics.

Robert Crouchley is a professor of applied statistics and director of the Centre for e-Science at Lancaster University. His research interests involve the development of statistical methods and software for causal inference in nonexperimental data. These methods include models for errors in variables, missing data, heterogeneity, state dependence, nonstationarity, event history data, and selection effects.