Longitudinal data arise when subjects are followed over time. This type of data is typically dependent, due to including repeated observations and this type of dependence is termed as within-subject dependence. Often the scientific interest is on multiple longitudinal measurements which introduce two additional types of associations, between-response and cross-response temporal dependencies. Only the statistical methods which take these association structures might yield reliable and valid statistical inferences. Although the methods for univariate longitudinal data have been mostly studied, multivariate longitudinal data still needs more work. In this thesis, although we mainly focus on multivariate longitudinal binary data models, we also...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Longitudinal data is collected repeatedly over time. Longitudinal data usually have correlation in a...
Modeling multivariate longitudinal data has many challenges in terms of both statistical and computa...
Generalized linear models with random effects and/or serial dependence are commonly used to analyze ...
This thesis study considers analysis of bivariate longitudinal binary data. We propose a model based...
Bivariate longitudinal binary data arise from studies, in which bivariate responses are collected fo...
Forecasting with longitudinal data has been rarely studied. Most of the available studies are for co...
Forecasting with longitudinal data has been rarely studied. Most of the available studies are for co...
The shared-parameter model and its so-called hierarchical or random-effects extension are widely use...
In longitudinal studies, observational units (commonly referred to as individuals) drawn from some p...
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...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Summary. Data involving longitudinal counts are not uncommon. Here we propose new marginalized trans...
<p>Marginalised models, also known as marginally specified models, have recently become a popular to...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Longitudinal data is collected repeatedly over time. Longitudinal data usually have correlation in a...
Modeling multivariate longitudinal data has many challenges in terms of both statistical and computa...
Generalized linear models with random effects and/or serial dependence are commonly used to analyze ...
This thesis study considers analysis of bivariate longitudinal binary data. We propose a model based...
Bivariate longitudinal binary data arise from studies, in which bivariate responses are collected fo...
Forecasting with longitudinal data has been rarely studied. Most of the available studies are for co...
Forecasting with longitudinal data has been rarely studied. Most of the available studies are for co...
The shared-parameter model and its so-called hierarchical or random-effects extension are widely use...
In longitudinal studies, observational units (commonly referred to as individuals) drawn from some p...
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...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Summary. Data involving longitudinal counts are not uncommon. Here we propose new marginalized trans...
<p>Marginalised models, also known as marginally specified models, have recently become a popular to...
Marginalised models, also known as marginally specified models, have recently become a popular tool ...
Longitudinal data is collected repeatedly over time. Longitudinal data usually have correlation in a...
Modeling multivariate longitudinal data has many challenges in terms of both statistical and computa...