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Latent time‐varying factors in longitudinal analysis: a linear mixed hidden Markov model for heart rates
Authors:Francesco Lagona  Dmitri Jdanov  Maria Shkolnikova
Affiliation:1. University of Roma Tre, , Rome, Italy;2. Max Planck Institute for Demographic Research, , Rostock, Germany
Abstract:Longitudinal data are often segmented by unobserved time‐varying factors, which introduce latent heterogeneity at the observation level, in addition to heterogeneity across subjects. We account for this latent structure by a linear mixed hidden Markov model. It integrates subject‐specific random effects and Markovian sequences of time‐varying effects in the linear predictor. We propose an expectation?‐maximization algorithm for maximum likelihood estimation, based on data augmentation. It reduces to the iterative maximization of the expected value of a complete likelihood function, derived from an augmented dataset with case weights, alternated with weights updating. In a case study of the Survey on Stress Aging and Health in Russia, the model is exploited to estimate the influence of the observed covariates under unobserved time‐varying factors, which affect the cardiovascular activity of each subject during the observation period. Copyright © 2014 John Wiley & Sons, Ltd.
Keywords:heart rate  hidden Markov model  EM algorithm  linear mixed model  longitudinal data
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