In this paper we propose a clustering technique for discretely ob- served continuous-time models in order to take account of groups of individuals having similar process realizations. In fact, fitting standard parametric models in presence of heterogeneity between population groups may produce biased infer- ences for relevant process features. To model individual heterogeneity we consider both finite mixtures and Dirichlet process mixture (DPM) of different multi-state models. We base our algorithms on the whole reconstructed trajectories with the reconstruction step conducted by the uniformization technique usually employed for the generation of Markovian multi-state processes. We present MCMC in- ference for Markov, semi-Markov and in-homogeneous Markov models with an application to a real dataset.

Barone, R., Tancredi, A., Bayesian mixtures of discretely observed multi-state models, in Proceedings of the 36th International Workshop on Statistical Modelling, (Trieste, 18-22 July 2022), EUT Edizioni Università di Trieste, Trieste 2022: 385-389 [https://hdl.handle.net/10807/323987]

Bayesian mixtures of discretely observed multi-state models

Barone, Rosario;
2022

Abstract

In this paper we propose a clustering technique for discretely ob- served continuous-time models in order to take account of groups of individuals having similar process realizations. In fact, fitting standard parametric models in presence of heterogeneity between population groups may produce biased infer- ences for relevant process features. To model individual heterogeneity we consider both finite mixtures and Dirichlet process mixture (DPM) of different multi-state models. We base our algorithms on the whole reconstructed trajectories with the reconstruction step conducted by the uniformization technique usually employed for the generation of Markovian multi-state processes. We present MCMC in- ference for Markov, semi-Markov and in-homogeneous Markov models with an application to a real dataset.
2022
Inglese
Proceedings of the 36th International Workshop on Statistical Modelling
36th International Workshop on Statistical Modelling
Trieste
18-lug-2022
22-lug-2022
978-88-5511-309-0
EUT Edizioni Università di Trieste
Barone, R., Tancredi, A., Bayesian mixtures of discretely observed multi-state models, in Proceedings of the 36th International Workshop on Statistical Modelling, (Trieste, 18-22 July 2022), EUT Edizioni Università di Trieste, Trieste 2022: 385-389 [https://hdl.handle.net/10807/323987]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/323987
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