We develop a general Bayesian semiparametric change-point model in which separate groups of structural parameters (for example, location and dispersion parameters) can each follow a separate multiple change-point process, driven by time-dependent transition matrices among the latent regimes. The distribution of the observations within regimes is unknown and given by a Dirichlet process mixture prior. The properties of the proposed model are studied theoretically through the analysis of inter-arrival times and of the number of change-points in a given time interval. The prior-posterior analysis by Markov chain Monte Carlo techniques is developed on a forward-backward algorithm for sampling the various regime indicators. Analysis with simulated data under various scenarios and an application to short-term interest rates are used to show the generality and usefulness of the proposed model

Peluso, S., Chib, S., Mira, A. (2019). Semiparametric Multivariate and Multiple Change-Point Modeling. BAYESIAN ANALYSIS, 14(3), 727-751 [10.1214/18-BA1125].

Semiparametric Multivariate and Multiple Change-Point Modeling

Stefano Peluso
;
2019

Abstract

We develop a general Bayesian semiparametric change-point model in which separate groups of structural parameters (for example, location and dispersion parameters) can each follow a separate multiple change-point process, driven by time-dependent transition matrices among the latent regimes. The distribution of the observations within regimes is unknown and given by a Dirichlet process mixture prior. The properties of the proposed model are studied theoretically through the analysis of inter-arrival times and of the number of change-points in a given time interval. The prior-posterior analysis by Markov chain Monte Carlo techniques is developed on a forward-backward algorithm for sampling the various regime indicators. Analysis with simulated data under various scenarios and an application to short-term interest rates are used to show the generality and usefulness of the proposed model
Articolo in rivista - Articolo scientifico
Bayesian Semiparametric Inference; Dirichlet Process Mixture; Heterogeneous Transition Matrices; Interest Rates
English
2019
14
3
727
751
none
Peluso, S., Chib, S., Mira, A. (2019). Semiparametric Multivariate and Multiple Change-Point Modeling. BAYESIAN ANALYSIS, 14(3), 727-751 [10.1214/18-BA1125].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/266156
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