Abstract
We propose a Bayesian hidden Markov model for analyzing time series and sequential data where a special structure of the transition probability matrix is embedded to model explicit-duration semi-Markovian dynamics. Our formulation allows for the development of highly flexible and interpretable models that can integrate available prior information on state durations while keeping a moderate computational cost to perform efficient posterior inference. We show the benefits of choosing a Bayesian approach for HSMM estimation over its frequentist counterpart, in terms of model selection and out-of-sample forecasting, also highlighting the computational feasibility of our inference procedure whilst incurring negligible statistical error. The use of our methodology is illustrated in an application relevant to e-Health, where we investigate rest-activity rhythms using telemetric activity data collected via a wearable sensing device. This analysis considers for the first time Bayesian model selection for the form of the explicit state dwell distribution.
Original language | English (US) |
---|---|
Pages (from-to) | 547-577 |
Number of pages | 31 |
Journal | Bayesian Analysis |
Volume | 18 |
Issue number | 2 |
DOIs | |
State | Published - 2023 |
Bibliographical note
Publisher Copyright:© 23 International Society for Bayesian Analysis
Keywords
- Bayes factor
- Hamiltonian Monte Carlo
- Markov switching process
- circadian rhythm
- telemetric activity data