Mixed latent Markov (MLM) models represent an important tool of analysis of longitudinal data when response variables are affected by time-fixed and time-varying unobserved heterogeneity, in which the latter is accounted for by a hidden Markov chain. In order to avoid bias when using a model of this type in the presence of informative drop-out, we propose an event-history (EH) extension of the latent Markov approach that may be used with multivariate longitudinal data, in which one or more outcomes of a different nature are observed at each time occasion. The EH component of the resulting model is referred to the interval-censored drop-out, and bias in MLM modeling is avoided by correlated random effects, included in the different model com...
Missing data and especially dropouts frequently arise in longitudinal data. Maximum likelihood estim...
Hidden Markov models (HMMs) are a useful tool for capturing the behavior of overdispersed, autocorre...
International audienceAnalysing longitudinal declarative data raises many difficulties, such as the ...
Mixed latent Markov (MLM) models represent an important tool of analysis of longitudinal data when r...
Latent Markov (LM) models represent an important tool of analysis of longitudinal data when response...
Abstract We propose a class of models for the analysis of longitudinal data subject to non-ignorable...
A shared-parameter approach for jointly modeling longitudinal and survival data is proposed. With re...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
Dropout is a common occurrence in longitudinal studies. Building upon the pattern-mixture modeling a...
Drop out is a typical issue in longitudinal studies. When the missingness is non-ignorable, inferenc...
In this paper we review statistical methods which combine hidden Markov models (HMMs) and random eff...
We adopt a hidden state approach for the analysis of longitudinal data subject to dropout. Motivated...
Longitudinal data are often segmented by unobserved time-varying factors, which introduce latent het...
<div><p>We propose a general Bayesian joint modeling approach to model mixed longitudinal outcomes f...
A number of methods have been developed to analyze longitudinal data with dropout. However, there i...
Missing data and especially dropouts frequently arise in longitudinal data. Maximum likelihood estim...
Hidden Markov models (HMMs) are a useful tool for capturing the behavior of overdispersed, autocorre...
International audienceAnalysing longitudinal declarative data raises many difficulties, such as the ...
Mixed latent Markov (MLM) models represent an important tool of analysis of longitudinal data when r...
Latent Markov (LM) models represent an important tool of analysis of longitudinal data when response...
Abstract We propose a class of models for the analysis of longitudinal data subject to non-ignorable...
A shared-parameter approach for jointly modeling longitudinal and survival data is proposed. With re...
In many studies the outcome of main interest cannot be measured by a single response. There is a gre...
Dropout is a common occurrence in longitudinal studies. Building upon the pattern-mixture modeling a...
Drop out is a typical issue in longitudinal studies. When the missingness is non-ignorable, inferenc...
In this paper we review statistical methods which combine hidden Markov models (HMMs) and random eff...
We adopt a hidden state approach for the analysis of longitudinal data subject to dropout. Motivated...
Longitudinal data are often segmented by unobserved time-varying factors, which introduce latent het...
<div><p>We propose a general Bayesian joint modeling approach to model mixed longitudinal outcomes f...
A number of methods have been developed to analyze longitudinal data with dropout. However, there i...
Missing data and especially dropouts frequently arise in longitudinal data. Maximum likelihood estim...
Hidden Markov models (HMMs) are a useful tool for capturing the behavior of overdispersed, autocorre...
International audienceAnalysing longitudinal declarative data raises many difficulties, such as the ...