We propose a class of models for the analysis of longitudinal data subject to non-ignorable drop-out. A mixed hidden Markov model for the longitudinal process is introduced with a latent drop-out class describing the influence of missingness on the response variable. A conditional generalized linear model is specified for the longitudinal profile to express dependence between observations from the same individual due to time-constant and time-varying latent characteristics. Furthermore, a latent drop-out variable is considered to explain differences between individuals having different drop-out patterns. The probability of being in one of the drop-out class is modelled through an ordinal logit model, including the time to drop-out as covariate. Parameter estimates are obtained via an EM algorithm to take into account of the presence of several (discrete and continuous) latent variables.

Latent drop-out hidden Markov model with mixed effects / Marino, Maria Francesca; Alfò, Marco. - ELETTRONICO. - (2013), pp. 0-0. (Intervento presentato al convegno Conference of the Italian Statistical Society 2013, Advances in Latent Variables - Methods, Models and Application).

Latent drop-out hidden Markov model with mixed effects

MARINO, MARIA FRANCESCA;
2013

Abstract

We propose a class of models for the analysis of longitudinal data subject to non-ignorable drop-out. A mixed hidden Markov model for the longitudinal process is introduced with a latent drop-out class describing the influence of missingness on the response variable. A conditional generalized linear model is specified for the longitudinal profile to express dependence between observations from the same individual due to time-constant and time-varying latent characteristics. Furthermore, a latent drop-out variable is considered to explain differences between individuals having different drop-out patterns. The probability of being in one of the drop-out class is modelled through an ordinal logit model, including the time to drop-out as covariate. Parameter estimates are obtained via an EM algorithm to take into account of the presence of several (discrete and continuous) latent variables.
2013
Proceedings of the 2013 Conference of the Italian Statistical Society, Advances in Latent Variables - Methods, Models and Applications.
Conference of the Italian Statistical Society 2013, Advances in Latent Variables - Methods, Models and Application
Marino, Maria Francesca; Alfò, Marco
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1088953
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