Continuing to emphasize numerical and graphical methods, An Introduction to Generalized Linear Models, Third Edition provides a cohesive framework for statistical modeling. This new edition of a bestseller has been updated with Stata, R, and WinBUGS code as well as three new chapters on Bayesian analysis. Like its predecessor, this edition presents the theoretical background of generalized linear models (GLMs) before focusing on methods for analyzing particular kinds of data. It covers normal, Poisson, and binomial distributions; linear regression models; classical estimation and model fitting methods; and frequentist methods of statistical inference. After forming this foundation, the authors explore multiple linear regression, analysis of...
The analysis of residuals can capture departures from a parametrized model. In this thesis we look a...
Reviewing the theory of the general linear model (GLM) using a general framework, Univariate and Mul...
The technique of iterative weighted linear regression can be used to obtain maximum likelihood estim...
- Introduces GLMs in a way that enables readers to understand the unifying structure that underpins ...
This book is concerned with the use of generalized linear models for univariate and multivariate reg...
Introduction Background Scope Notation Distributions Related to the Normal Distribution Quadrat...
This textbook presents an introduction to multiple linear regression, providing real-world data sets...
An accessible and self-contained introduction to statistical models-now in a modernized new editionG...
The generalized linear mixed model (GLMM) generalizes the standard linear model in three ways: accom...
This paper aims to approach the estimation of generalized linear models (GLM) on the basis of the gl...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
In this dissertation we develop an innovative approach to analyze the scientific studies using the g...
An important statistical development in the last four decades has been the advancement in the field ...
This book covers two major classes of mixed effects models, linear mixed models and generalized line...
Description Extended techniques for generalized linear models (GLMs), especially for binary re-spons...
The analysis of residuals can capture departures from a parametrized model. In this thesis we look a...
Reviewing the theory of the general linear model (GLM) using a general framework, Univariate and Mul...
The technique of iterative weighted linear regression can be used to obtain maximum likelihood estim...
- Introduces GLMs in a way that enables readers to understand the unifying structure that underpins ...
This book is concerned with the use of generalized linear models for univariate and multivariate reg...
Introduction Background Scope Notation Distributions Related to the Normal Distribution Quadrat...
This textbook presents an introduction to multiple linear regression, providing real-world data sets...
An accessible and self-contained introduction to statistical models-now in a modernized new editionG...
The generalized linear mixed model (GLMM) generalizes the standard linear model in three ways: accom...
This paper aims to approach the estimation of generalized linear models (GLM) on the basis of the gl...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
In this dissertation we develop an innovative approach to analyze the scientific studies using the g...
An important statistical development in the last four decades has been the advancement in the field ...
This book covers two major classes of mixed effects models, linear mixed models and generalized line...
Description Extended techniques for generalized linear models (GLMs), especially for binary re-spons...
The analysis of residuals can capture departures from a parametrized model. In this thesis we look a...
Reviewing the theory of the general linear model (GLM) using a general framework, Univariate and Mul...
The technique of iterative weighted linear regression can be used to obtain maximum likelihood estim...