Understanding why a random variable is actually random has been in the core of Statistics from its beginnings. The generalized Waring regression model for count data explains that inherent variability is given by three possible sources: randomness, liability and proneness. The model extends the negative binomial regression model and it is not included in the family of generalized linear models. In order to avoid that shortcoming, we developed the GWRM R package for fitting, describing and validating the model. The version we introduce in this communication provides a new design of the modelling function as well as new methods operating on the associated fitted model objects, so that the new software integrates easily into the computational ...
The R package tscount provides likelihood-based estimation methods for analysis and modeling of coun...
The mixpoissonreg package is an R package that fits mixed Poisson regression models (Poisson-Inverse...
Random effects have become a standard concept in statistical modelling over the last decades. They ...
<div><p>Understanding why a random variable is actually random has been in the core of Statistics fr...
R is now the most widely used statistical package/language in university statistics departments and ...
Count and proportion data may present overdispersion, i.e., greater variability than expected by the...
R is now the most widely used statistical package/language in university statistics departments and ...
Count and proportion data may present overdispersion, i.e., greater variability than expected by the...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
The classical Poisson, geometric and negative binomial regression models for count data belong to th...
The aim of this document is to show the use of the function algo.glrnb for a type of count data regr...
The classical Poisson, geometric and negative binomial regression models for count data belong to th...
In this paper is proposed a straightforward model selection approach that indicates the most suitabl...
Count data can be analyzed using generalized linear mixed models when observations are correlated in...
Multivariate Generalized Linear Mixed Models Using R presents robust and methodologically sound mode...
The R package tscount provides likelihood-based estimation methods for analysis and modeling of coun...
The mixpoissonreg package is an R package that fits mixed Poisson regression models (Poisson-Inverse...
Random effects have become a standard concept in statistical modelling over the last decades. They ...
<div><p>Understanding why a random variable is actually random has been in the core of Statistics fr...
R is now the most widely used statistical package/language in university statistics departments and ...
Count and proportion data may present overdispersion, i.e., greater variability than expected by the...
R is now the most widely used statistical package/language in university statistics departments and ...
Count and proportion data may present overdispersion, i.e., greater variability than expected by the...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
The classical Poisson, geometric and negative binomial regression models for count data belong to th...
The aim of this document is to show the use of the function algo.glrnb for a type of count data regr...
The classical Poisson, geometric and negative binomial regression models for count data belong to th...
In this paper is proposed a straightforward model selection approach that indicates the most suitabl...
Count data can be analyzed using generalized linear mixed models when observations are correlated in...
Multivariate Generalized Linear Mixed Models Using R presents robust and methodologically sound mode...
The R package tscount provides likelihood-based estimation methods for analysis and modeling of coun...
The mixpoissonreg package is an R package that fits mixed Poisson regression models (Poisson-Inverse...
Random effects have become a standard concept in statistical modelling over the last decades. They ...