Analyses of longitudinal categorical data are typically based on semiparametric models in which covariate effects are expressed on marginal probabilities and estimation is carried out based on generalized estimating equations (GEE). Methods based on GEE are motivated in part by the lack of tractable models for clustered categorical data. However such marginal methods may not yield fully efficient estimates, nor consistent estimates when missing data are present. In the first part of the thesis I develop a Markov model for the analysis of longitudinal categorical data which facilitates modeling marginal and conditional structures. A likelihood formulation is employed for inference, so the resulting estimators enjoy properties such...
In longitudinal data analysis, our primary interest is in the regression parameters for the margina...
Medical researchers strive to collect complete information, but most studies will have some degree o...
Investigators often gather longitudinal data to assess changes in responses over time within subject...
Multi-state models have been widely used to analyze longitudinal event history data obtained in medi...
Missing problem is very common in today's public health studies because of responses measured longit...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
In this thesis, we address issues of model estimation for longitudinal categorical data and of model...
Doctor of Philosophy in Statistics. University of KwaZulu-Natal, Pietermaritzburg 2017.In longitudin...
Missing responses are very common in longitudinal data. Much research has been going on, on ways to ...
Inference for cross-sectional models using longitudinal data can be drawn with independence estimati...
Thesis (Ph.D.)-University of KwaZulu-Natal, Pietermarizburg, 2008.The analysis of longitudinal binar...
The focus of this research is to improve existing methods for the marginal modeling of associated ca...
In longitudinal studies, data are collected on a group of individuals over a period of time, and ine...
Longitudinal studies often feature incomplete response and covariate data. Likelihood-based methods...
Medical researchers strive to collect complete information, but most studies will have some degree o...
In longitudinal data analysis, our primary interest is in the regression parameters for the margina...
Medical researchers strive to collect complete information, but most studies will have some degree o...
Investigators often gather longitudinal data to assess changes in responses over time within subject...
Multi-state models have been widely used to analyze longitudinal event history data obtained in medi...
Missing problem is very common in today's public health studies because of responses measured longit...
One difficulty in regression analysis for longitudinal data is that the outcomes are oftenmissing in...
In this thesis, we address issues of model estimation for longitudinal categorical data and of model...
Doctor of Philosophy in Statistics. University of KwaZulu-Natal, Pietermaritzburg 2017.In longitudin...
Missing responses are very common in longitudinal data. Much research has been going on, on ways to ...
Inference for cross-sectional models using longitudinal data can be drawn with independence estimati...
Thesis (Ph.D.)-University of KwaZulu-Natal, Pietermarizburg, 2008.The analysis of longitudinal binar...
The focus of this research is to improve existing methods for the marginal modeling of associated ca...
In longitudinal studies, data are collected on a group of individuals over a period of time, and ine...
Longitudinal studies often feature incomplete response and covariate data. Likelihood-based methods...
Medical researchers strive to collect complete information, but most studies will have some degree o...
In longitudinal data analysis, our primary interest is in the regression parameters for the margina...
Medical researchers strive to collect complete information, but most studies will have some degree o...
Investigators often gather longitudinal data to assess changes in responses over time within subject...