<p>Marginalised models, also known as marginally specified models, have recently become a popular tool for analysis of discrete longitudinal data. Despite being a novel statistical methodology, these models introduce complex constraint equations and model fitting algorithms. On the other hand, there is a lack of publicly available software to fit these models. In this paper, we propose a three-level marginalised model for analysis of multivariate longitudinal binary outcome. The implicit function theorem is introduced to approximately solve the marginal constraint equations explicitly. <i>probit</i> link enables direct solutions to the convolution equations. Parameters are estimated by maximum likelihood via a Fisher–Scoring algorithm. A si...
Bivariate longitudinal binary data arise from studies, in which bivariate responses are collected fo...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Generalized linear models with random effects and/or serial dependence are commonly used to analyze ...
Longitudinal data arise when subjects are followed over time. This type of data is typically depende...
This thesis study considers analysis of bivariate longitudinal binary data. We propose a model based...
Summary. Data involving longitudinal counts are not uncommon. Here we propose new marginalized trans...
Random effects are often used in generalized linear models to explain the serial dependence for long...
Most of the available multivariate statistical models dictate on fitting different parameters for th...
Most of the available multivariate statistical models dictate on fitting different parameters for th...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
The analysis of longitudinal data where the response variable is binary is considered from the point...
Probit-normal models have attractive properties compared to logit-normal models. In particular, they...
Bivariate longitudinal binary data arise from studies, in which bivariate responses are collected fo...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Generalized linear models with random effects and/or serial dependence are commonly used to analyze ...
Longitudinal data arise when subjects are followed over time. This type of data is typically depende...
This thesis study considers analysis of bivariate longitudinal binary data. We propose a model based...
Summary. Data involving longitudinal counts are not uncommon. Here we propose new marginalized trans...
Random effects are often used in generalized linear models to explain the serial dependence for long...
Most of the available multivariate statistical models dictate on fitting different parameters for th...
Most of the available multivariate statistical models dictate on fitting different parameters for th...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
The analysis of longitudinal data where the response variable is binary is considered from the point...
Probit-normal models have attractive properties compared to logit-normal models. In particular, they...
Bivariate longitudinal binary data arise from studies, in which bivariate responses are collected fo...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...