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Bayesian clustering for continuous-time hidden Markov models
Authors:Yu Luo  David A Stephens  David L Buckeridge
Institution:1. Department of Mathematics, King's College London, London, U.K;2. Department of Mathematics and Statistics, McGill University, Montreal, Canada;3. Department of Epidemiology, Biostatistics and Occupational Health, McGill University, Montreal, Canada
Abstract:We develop clustering procedures for longitudinal trajectories based on a continuous-time hidden Markov model (CTHMM) and a generalized linear observation model. Specifically, in this article we carry out finite and infinite mixture model-based clustering for a CTHMM and achieve inference using Markov chain Monte Carlo (MCMC). For a finite mixture model with a prior on the number of components, we implement reversible-jump MCMC to facilitate the trans-dimensional move between models with different numbers of clusters. For a Dirichlet process mixture model, we utilize restricted Gibbs sampling split–merge proposals to improve the performance of the MCMC algorithm. We apply our proposed algorithms to simulated data as well as a real-data example, and the results demonstrate the desired performance of the new sampler.
Keywords:Continuous-time hidden Markov models  mixture models  model-based clustering  nonparametric Bayesian inference  reversible-jump MCMC  split–merge proposal  MSC 2020: Primary 60J22  62F15  secondary 62H30
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