Missing problem is very common in today's public health studies because of responses measured longitudinally. In this dissertation we proposed two latent variable models for longitudinal data with informative missingness. In the first approach, a latent variable model is developed for the categorical data, dividing the observed data into two latent classes: a 'regular' class and a 'special' class. Outcomes belonging to the regular class can be modeled using logistc regression and the outcomes in the special class have pre-deterministic values. Under the important assumption of conditional independence in the latent variable models, the longitudinal responses and the missingness process are independent given the latent classes. Parameters th...
In this paper, we consider a full likelihood method to analyze continuous longitudinal responses wit...
For the analysis of multivariate categorical longitudinal data, we propose an extension of the dynam...
Missing data are frequently encountered in longitudinal clinical trials. To better monitor and under...
Missing problem is very common in today's public health studies because of responses measured longit...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
Latent class models have been developed as a flexible way of modeling the correlation of multivariat...
Longitudinal data are collected for studying changes across time. In social sciences, interest is of...
This dissertation concerns statistical analyses with latent variables under two scenarios. Many disc...
When researchers are interested in measuring social phenomena that cannot be measured using a single...
The discrete-time Markov chain is commonly used in describing changes of health states for chronic d...
Missing responses are very common in longitudinal data. Much research has been going on, on ways to ...
The paper proposes a full information maximum likelihood estimation method for modelling multivariat...
In this thesis, we address issues of model estimation for longitudinal categorical data and of model...
Missing data is a common problem in longitudinal studies because of the characteristics of repeated ...
AbstractMissing observations occur commonly in longitudinal studies, and it has been documented that...
In this paper, we consider a full likelihood method to analyze continuous longitudinal responses wit...
For the analysis of multivariate categorical longitudinal data, we propose an extension of the dynam...
Missing data are frequently encountered in longitudinal clinical trials. To better monitor and under...
Missing problem is very common in today's public health studies because of responses measured longit...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
Latent class models have been developed as a flexible way of modeling the correlation of multivariat...
Longitudinal data are collected for studying changes across time. In social sciences, interest is of...
This dissertation concerns statistical analyses with latent variables under two scenarios. Many disc...
When researchers are interested in measuring social phenomena that cannot be measured using a single...
The discrete-time Markov chain is commonly used in describing changes of health states for chronic d...
Missing responses are very common in longitudinal data. Much research has been going on, on ways to ...
The paper proposes a full information maximum likelihood estimation method for modelling multivariat...
In this thesis, we address issues of model estimation for longitudinal categorical data and of model...
Missing data is a common problem in longitudinal studies because of the characteristics of repeated ...
AbstractMissing observations occur commonly in longitudinal studies, and it has been documented that...
In this paper, we consider a full likelihood method to analyze continuous longitudinal responses wit...
For the analysis of multivariate categorical longitudinal data, we propose an extension of the dynam...
Missing data are frequently encountered in longitudinal clinical trials. To better monitor and under...