In this paper we propose a clustering technique for continuous-time semi- Markov models in order to take account of groups of individuals having similar process realizations. In fact fitting standard parametric models in presence of het- erogeneity between population groups may produce biased inferences for relevant process feautres. To model individual heterogeneity we consider a Dirichlet process mixture (DPM) of semi-Markov continuous-time models. We also consider the case of discretely observed trajectories of continuous time processes, providing an algo- rithm which clusterize the observations after having reconstructed the continuous- time paths between the observed points. Full MCMC inference is performed with an application to a real dataset.
Barone, R., Tancredi, A., Bayesian mixtures of semi-Markov models, in Book of Short Papers SIS 2022, (Caserta, 22-24 June 2022), Pearson, Caserta 2022: 1697-1702 [https://hdl.handle.net/10807/323986]
Bayesian mixtures of semi-Markov models
Barone, Rosario
;
2022
Abstract
In this paper we propose a clustering technique for continuous-time semi- Markov models in order to take account of groups of individuals having similar process realizations. In fact fitting standard parametric models in presence of het- erogeneity between population groups may produce biased inferences for relevant process feautres. To model individual heterogeneity we consider a Dirichlet process mixture (DPM) of semi-Markov continuous-time models. We also consider the case of discretely observed trajectories of continuous time processes, providing an algo- rithm which clusterize the observations after having reconstructed the continuous- time paths between the observed points. Full MCMC inference is performed with an application to a real dataset.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.



