The analysis of longitudinal data where the response variable is binary is considered from the point of view of likelihood inference, which requires complete specification of a stochastic model for the individual profile. The problem is tackled using binary Markov chains as the basic stochastic mechanism; this must however be suitably parametrised in order to model the marginal behaviour of the observations. Random effects are also considered, in addition to the above form of serial dependence. The methodology is illustrated with a numerical example
We propose a new class of state space models for longitudinal discrete response data where the obser...
We present a general procedure for joint modelling of the mean structure and the stochastic dependen...
Likelihood-based inference for antedependence (Markov) models for categorical longitudinal dat
Longitudinal data is collected repeatedly over time. Longitudinal data usually have correlation in a...
Generalized linear models with random effects and/or serial dependence are commonly used to analyze ...
We present a latent Markov version of the Rasch model which is suitable for the analysis of binary ...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...
Random effects are often used in generalized linear models to explain the serial dependence for long...
This thesis study considers analysis of bivariate longitudinal binary data. We propose a model based...
<p>Marginalised models, also known as marginally specified models, have recently become a popular to...
The current work deals with modelling longitudinal or repeated non-Gaussian measurements for a respi...
"Preface Latent Markov models represent an important class of latent variable models for the analysi...
In this dissertation, we propose a continuous-time Markov chain model to examine the longitudinal da...
In this dissertation, we propose a continuous-time Markov chain model to examine the longitudinal da...
Thesis (Ph.D.)-University of KwaZulu-Natal, Pietermarizburg, 2008.The analysis of longitudinal binar...
We propose a new class of state space models for longitudinal discrete response data where the obser...
We present a general procedure for joint modelling of the mean structure and the stochastic dependen...
Likelihood-based inference for antedependence (Markov) models for categorical longitudinal dat
Longitudinal data is collected repeatedly over time. Longitudinal data usually have correlation in a...
Generalized linear models with random effects and/or serial dependence are commonly used to analyze ...
We present a latent Markov version of the Rasch model which is suitable for the analysis of binary ...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...
Random effects are often used in generalized linear models to explain the serial dependence for long...
This thesis study considers analysis of bivariate longitudinal binary data. We propose a model based...
<p>Marginalised models, also known as marginally specified models, have recently become a popular to...
The current work deals with modelling longitudinal or repeated non-Gaussian measurements for a respi...
"Preface Latent Markov models represent an important class of latent variable models for the analysi...
In this dissertation, we propose a continuous-time Markov chain model to examine the longitudinal da...
In this dissertation, we propose a continuous-time Markov chain model to examine the longitudinal da...
Thesis (Ph.D.)-University of KwaZulu-Natal, Pietermarizburg, 2008.The analysis of longitudinal binar...
We propose a new class of state space models for longitudinal discrete response data where the obser...
We present a general procedure for joint modelling of the mean structure and the stochastic dependen...
Likelihood-based inference for antedependence (Markov) models for categorical longitudinal dat