<div><p>In applied statistical data analysis, overdispersion is a common feature. It can be addressed using both multiplicative and additive random effects. A multiplicative model for count data incorporates a gamma random effect as a multiplicative factor into the mean, whereas an additive model assumes a normally distributed random effect, entered into the linear predictor. Using Bayesian principles, these ideas are applied to longitudinal count data, based on the so-called combined model. The performance of the additive and multiplicative approaches is compared using a simulation study.</p></div
Em ensaios clínicos é muito comum a ocorrência de dados longitudinais discretos. Para sua análise é ...
The generalized estimating equation (GEE) approach to the analysis of longitudinal data has many att...
© 2014 SAGE Publications. Non-Gaussian outcomes are frequently modelled using members of the exponen...
In applied statistical data analysis, overdispersion is a common feature. It can be addressed using ...
In sets of count data, the sample variance is often considerably larger or smaller than the sample m...
<p>In this paper, we consider a model for repeated count data, with within-subject correlation and/o...
Overdispersion and correlation are two features often encountered when modeling non-Gaussian depende...
Biomedical count data such as the number of seizures for epilepsy patients, number of new tumors at ...
When modelling multivariate binomial data, it often occurs that it is necessary to take into conside...
Mixed Poisson models are most relevant to the analysis of longitudinal count data in various discipl...
<div><p>Frequent problems in applied research preventing the application of the classical Poisson lo...
When modelling multivariate binomial data, it often occurs that it is necessary to take into conside...
Longitudinal data refer to multiple observations collected on the same subject (or unit) over time. ...
In many biomedical studies, one jointly collects longitudinal continuous, binary, and survival outco...
This thesis is about estimation bias of longitudinal data when there is correlation between the expl...
Em ensaios clínicos é muito comum a ocorrência de dados longitudinais discretos. Para sua análise é ...
The generalized estimating equation (GEE) approach to the analysis of longitudinal data has many att...
© 2014 SAGE Publications. Non-Gaussian outcomes are frequently modelled using members of the exponen...
In applied statistical data analysis, overdispersion is a common feature. It can be addressed using ...
In sets of count data, the sample variance is often considerably larger or smaller than the sample m...
<p>In this paper, we consider a model for repeated count data, with within-subject correlation and/o...
Overdispersion and correlation are two features often encountered when modeling non-Gaussian depende...
Biomedical count data such as the number of seizures for epilepsy patients, number of new tumors at ...
When modelling multivariate binomial data, it often occurs that it is necessary to take into conside...
Mixed Poisson models are most relevant to the analysis of longitudinal count data in various discipl...
<div><p>Frequent problems in applied research preventing the application of the classical Poisson lo...
When modelling multivariate binomial data, it often occurs that it is necessary to take into conside...
Longitudinal data refer to multiple observations collected on the same subject (or unit) over time. ...
In many biomedical studies, one jointly collects longitudinal continuous, binary, and survival outco...
This thesis is about estimation bias of longitudinal data when there is correlation between the expl...
Em ensaios clínicos é muito comum a ocorrência de dados longitudinais discretos. Para sua análise é ...
The generalized estimating equation (GEE) approach to the analysis of longitudinal data has many att...
© 2014 SAGE Publications. Non-Gaussian outcomes are frequently modelled using members of the exponen...