Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the generalization of classical normal models. Presenting methods for fitting GLMs with random effects to data, Generalized Linear Models with Random Effects: Unified Analysis via H-likelihood explores a wide range of applications, including combining information over trials (meta-analysis), analysis of frailty models for survival data, genetic epidemiology, and analysis of spatial and temporal models with correlated errors.Written by pioneering authorities in the field, this reference provides an introduction to various theories and examines likelihood inference and GLMs. The authors show how to extend the class of GLMs while retaining as much simplici...
Nonlinear mixed-effects (NLME) models and generalized linear mixed models (GLMM) are pop-ular in the...
HolaFor inferences from random-effect models Lee and Nelder (1996) proposed to use hierarchical like...
This textbook presents an introduction to multiple linear regression, providing real-world data sets...
Abstract: Random-effect models are becoming increasingly popular in the analysis of data. Lee and Ne...
- Introduces GLMs in a way that enables readers to understand the unifying structure that underpins ...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
This book provides a groundbreaking introduction to the likelihood inference for correlated survival...
Continuing to emphasize numerical and graphical methods, An Introduction to Generalized Linear Model...
The R package glmm enables likelihood-based inference for generalized linear mixed models with a can...
UnrestrictedGeneralized linear models (GLMs) are introduced by Nelder and Wedderburn. As an extensio...
The use of generalized linear models and generalized estimating equations in the public health and m...
We propose a class of double hierarchical generalized linear models in which random effects can be s...
The generalized linear mixed model (GLMM) generalizes the standard linear model in three ways: accom...
The class of generalized linear models is extended to allow for correlated observations, nonlinear m...
University of Minnesota Ph.D. dissertation. January 2016. Major: Statistics. Advisors: Charles Geyer...
Nonlinear mixed-effects (NLME) models and generalized linear mixed models (GLMM) are pop-ular in the...
HolaFor inferences from random-effect models Lee and Nelder (1996) proposed to use hierarchical like...
This textbook presents an introduction to multiple linear regression, providing real-world data sets...
Abstract: Random-effect models are becoming increasingly popular in the analysis of data. Lee and Ne...
- Introduces GLMs in a way that enables readers to understand the unifying structure that underpins ...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
This book provides a groundbreaking introduction to the likelihood inference for correlated survival...
Continuing to emphasize numerical and graphical methods, An Introduction to Generalized Linear Model...
The R package glmm enables likelihood-based inference for generalized linear mixed models with a can...
UnrestrictedGeneralized linear models (GLMs) are introduced by Nelder and Wedderburn. As an extensio...
The use of generalized linear models and generalized estimating equations in the public health and m...
We propose a class of double hierarchical generalized linear models in which random effects can be s...
The generalized linear mixed model (GLMM) generalizes the standard linear model in three ways: accom...
The class of generalized linear models is extended to allow for correlated observations, nonlinear m...
University of Minnesota Ph.D. dissertation. January 2016. Major: Statistics. Advisors: Charles Geyer...
Nonlinear mixed-effects (NLME) models and generalized linear mixed models (GLMM) are pop-ular in the...
HolaFor inferences from random-effect models Lee and Nelder (1996) proposed to use hierarchical like...
This textbook presents an introduction to multiple linear regression, providing real-world data sets...