Count and proportion data may present overdispersion, i.e., greater variability than expected by the Poisson and binomial models, respectively. Different extended generalized linear models that allow for overdispersion may be used to analyze this type of data, such as models that use a generalized variance function, random-effects models, zero-inflated models and compound distribution models. Assessing goodness-of-fit and verifying assumptions of these models is not an easy task and the use of half-normal plots with a simulated envelope is a possible solution for this problem. These plots are a useful indicator of goodness-of-fit that may be used with any generalized linear model and extensions. For GLIM users, functions that generated thes...
Poisson data frequently exhibit overdispersion; and, for univariate models, many options exist to ci...
We frequently encounter outcomes of count that have extra variation. This paper considers several al...
Abstract: Random-effect models are becoming increasingly popular in the analysis of data. Lee and Ne...
Count and proportion data may present overdispersion, i.e., greater variability than expected by the...
Count and proportion data may present overdispersion, i.e., greater variability than expected by the...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
Understanding why a random variable is actually random has been in the core of Statistics from its b...
<div><p>Understanding why a random variable is actually random has been in the core of Statistics fr...
© 2022 Informa UK Limited, trading as Taylor & Francis Group.Overdispersion is a common feature ...
In this paper the interest is in regression analysis for data that show possibly overdispersion or u...
<p>Proportion data from dose-response experiments are often overdispersed, characterised by a larger...
Traditional tools for model diagnosis for Generalized Linear Model (GLM), such as deviance and Pears...
<h2>File List</h2><blockquote> <p><a href="glmmeg.R">glmmeg.R</a>: R code demonstrating how to fit a...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
Poisson data frequently exhibit overdispersion; and, for univariate models, many options exist to ci...
We frequently encounter outcomes of count that have extra variation. This paper considers several al...
Abstract: Random-effect models are becoming increasingly popular in the analysis of data. Lee and Ne...
Count and proportion data may present overdispersion, i.e., greater variability than expected by the...
Count and proportion data may present overdispersion, i.e., greater variability than expected by the...
The R package HGLMMM has been developed to fit generalized linear models with random effects using t...
Understanding why a random variable is actually random has been in the core of Statistics from its b...
<div><p>Understanding why a random variable is actually random has been in the core of Statistics fr...
© 2022 Informa UK Limited, trading as Taylor & Francis Group.Overdispersion is a common feature ...
In this paper the interest is in regression analysis for data that show possibly overdispersion or u...
<p>Proportion data from dose-response experiments are often overdispersed, characterised by a larger...
Traditional tools for model diagnosis for Generalized Linear Model (GLM), such as deviance and Pears...
<h2>File List</h2><blockquote> <p><a href="glmmeg.R">glmmeg.R</a>: R code demonstrating how to fit a...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
Since their introduction in 1972, generalized linear models (GLMs) have proven useful in the general...
Poisson data frequently exhibit overdispersion; and, for univariate models, many options exist to ci...
We frequently encounter outcomes of count that have extra variation. This paper considers several al...
Abstract: Random-effect models are becoming increasingly popular in the analysis of data. Lee and Ne...