The analysis of incomplete longitudinal data requires joint modeling of the longitudinal outcomes (observed and unobserved) and the response indicators. When non-response does not depend on the unobserved outcomes, within a likelihood framework, the missingness is said to be ignorable, obviating the need to formally model the process that drives it. For the non-ignorable or non-random case, estimation is less straightforward, because one must work with the observed data likelihood, which involves integration over the missing values, thereby giving rise to computational complexity, especially for high-dimensional missingness. The stochastic EM algorithm is a variation of the expectation-maximization (EM) algorithm and is particularly useful ...
The discrete-time Markov chain is commonly used in describing changes of health states for chronic d...
Outcome-dependent sampling probabilities can be used to increase efficiency in observational studies...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
The analysis of incomplete longitudinal data requires joint modeling of the longitudinal outcomes (o...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
Missing responses are very common in longitudinal data. Much research has been going on, on ways to ...
In this paper, we consider a full likelihood method to analyze continuous longitudinal responses wit...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
In longitudinal studies missing data are the rule not the exception. We consider the analysis of lon...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
<div><p>We develop a Bayesian nonparametric model for a longitudinal response in the presence of non...
This dissertation includes three papers on missing data problems where methods other than parametric...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
Regression models are proposed for joint analysis of Poisson and continuous longitudinal data with n...
In this paper an algorithm called SEM, which is a stochastic version of the EM algorithm, is used to...
The discrete-time Markov chain is commonly used in describing changes of health states for chronic d...
Outcome-dependent sampling probabilities can be used to increase efficiency in observational studies...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
The analysis of incomplete longitudinal data requires joint modeling of the longitudinal outcomes (o...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
Missing responses are very common in longitudinal data. Much research has been going on, on ways to ...
In this paper, we consider a full likelihood method to analyze continuous longitudinal responses wit...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
In longitudinal studies missing data are the rule not the exception. We consider the analysis of lon...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
<div><p>We develop a Bayesian nonparametric model for a longitudinal response in the presence of non...
This dissertation includes three papers on missing data problems where methods other than parametric...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
Regression models are proposed for joint analysis of Poisson and continuous longitudinal data with n...
In this paper an algorithm called SEM, which is a stochastic version of the EM algorithm, is used to...
The discrete-time Markov chain is commonly used in describing changes of health states for chronic d...
Outcome-dependent sampling probabilities can be used to increase efficiency in observational studies...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...