Analysis of longitudinal count data has, for long, been done using a generalized linear mixed model (GLMM), in its Poisson-normal version, to account for correlation by specifying normal random effects. Univariate counts are often handled with the negativebinomial (NEGBIN) model taking into account overdispersion by use of gamma random effects. Inherently though, longitudinal count data commonly exhibit both features of correlation and overdispersion simultaneously, necessitating analysis methodology that can account for both. The introduction of the combined model (CM) by Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs, Verbeke, Demétrio, and Vieira (2010) serves this purpose, not only for count data but for the general exponenti...
Iddi and Molenberghs (2012) merged the attractive features of the so-called combined model of Molenb...
A Weibull-model-based approach is examined to handle under- and overdispersed discrete data in a hie...
© 2014 SAGE Publications. Count data are most commonly modeled using the Poisson model, or by one of...
Mixed Poisson models are most relevant to the analysis of longitudinal count data in various discipl...
Overdispersion and correlation are two features often encountered when modeling non-Gaussian depende...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
In many biomedical studies, one jointly collects longitudinal continuous, binary, and survival outco...
In sets of count data, the sample variance is often considerably larger or smaller than the sample m...
AbstractNon-Gaussian outcomes are often modeled using members of the so-called exponential family. N...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
Generalized linear and nonlinear mixed models (GLMMs and NLMMs) are commonly used to represent non-G...
Vangeneugden et al. [15] derived approximate correlation functions for longitudinal sequences of gen...
Correlated multivariate Poisson and binary variables occur naturally in medical, biological and epid...
Iddi and Molenberghs (2012) merged the attractive features of the so-called combined model of Molenb...
A Weibull-model-based approach is examined to handle under- and overdispersed discrete data in a hie...
© 2014 SAGE Publications. Count data are most commonly modeled using the Poisson model, or by one of...
Mixed Poisson models are most relevant to the analysis of longitudinal count data in various discipl...
Overdispersion and correlation are two features often encountered when modeling non-Gaussian depende...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
Molenberghs, Verbeke, and Demétrio (2007) and Molenberghs et al. (2010) proposed a general framework...
In many biomedical studies, one jointly collects longitudinal continuous, binary, and survival outco...
In sets of count data, the sample variance is often considerably larger or smaller than the sample m...
AbstractNon-Gaussian outcomes are often modeled using members of the so-called exponential family. N...
This article describes the R package CountsEPPM and its use in determining maximum likelihood estima...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
Generalized linear and nonlinear mixed models (GLMMs and NLMMs) are commonly used to represent non-G...
Vangeneugden et al. [15] derived approximate correlation functions for longitudinal sequences of gen...
Correlated multivariate Poisson and binary variables occur naturally in medical, biological and epid...
Iddi and Molenberghs (2012) merged the attractive features of the so-called combined model of Molenb...
A Weibull-model-based approach is examined to handle under- and overdispersed discrete data in a hie...
© 2014 SAGE Publications. Count data are most commonly modeled using the Poisson model, or by one of...