Longitudinal data are collected for studying changes across time. We consider multivariate longitudinal data where multiple observed variables, measured at each time point, are used as indicators for theoretical constructs (latent variables) of interest. A common problem in longitudinal studies is dropout, where subjects exit the study prematurely. Ignoring the dropout mechanism can lead to biased estimates, especially when the dropout is nonrandom. Our proposed approach uses latent variable models to capture the evolution of the latent phenomenon over time while also accounting for possibly nonrandom dropout. The dropout mechanism is modeled with a hazard function that depends on the latent variables and observed covariates. Different rela...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
The analysis of longitudinal data with nonignorable dropout remains an active area in biostatistics ...
A number of methods have been developed to analyze longitudinal data with dropout. However, there i...
Longitudinal data are collected for studying changes across time. We consider multivariate longitudi...
Longitudinal data are collected for studying changes across time. In social sciences, interest is of...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
Abstract We propose a class of models for the analysis of longitudinal data subject to non-ignorable...
Dropout is a common occurrence in longitudinal studies. Building upon the pattern-mixture modeling a...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
We consider estimation in generalized linear mixed models (GLMM) for longitudinal data with informat...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
The analysis of longitudinal data with nonignorable dropout remains an active area in biostatistics ...
A number of methods have been developed to analyze longitudinal data with dropout. However, there i...
Longitudinal data are collected for studying changes across time. We consider multivariate longitudi...
Longitudinal data are collected for studying changes across time. In social sciences, interest is of...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
Abstract We propose a class of models for the analysis of longitudinal data subject to non-ignorable...
Dropout is a common occurrence in longitudinal studies. Building upon the pattern-mixture modeling a...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
We consider estimation in generalized linear mixed models (GLMM) for longitudinal data with informat...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
The problem of analysing longitudinal data that are complicated by possibly informative drop-out has...
The analysis of longitudinal data with nonignorable dropout remains an active area in biostatistics ...
A number of methods have been developed to analyze longitudinal data with dropout. However, there i...