Literature DB >> 35706700

An MCMC computational approach for a continuous time state-dependent regime switching diffusion process.

El Houcine Hibbah1, Hamid El Maroufy1, Christiane Fuchs2,3,4, Taib Ziad5,6.   

Abstract

State-dependent regime switching diffusion processes or hybrid switching diffusion (HSD) processes are hard to simulate with classical methods which leads us to adopt a Markov chain Monte Carlo (MCMC) Bayesian approach very convenient to estimate complicated models such as the HSD one. In the HSD, the diffusion component is dependent on the switching discrete hidden regimes and the transition rates of the regime switching are dependent on the diffusion observations. Since in reality phenomena are only observed in discrete times, data imputation is called for to create more observations so as to have good approximations for the density of the diffusion process. Three categories of entities will be computed in a Bayesian context: The latent imputed observations, the regime switching states, and the parameters of the models. The latent imputed data is updated at random time intervals in block using a Metropolis Hastings algorithm. The switching states are computed by an adaptation of a forward filtering backward smoothing algorithm to the HSD model. The parameters are estimated after prior specifications and conditional posterior densities formulation using Gibbs sampler or Metropolis Hastings algorithm.
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Entities:  

Keywords:  Hybrid switching diffusion model; data imputation; hidden states computation; random time imputation; states computation

Year:  2019        PMID: 35706700      PMCID: PMC9041985          DOI: 10.1080/02664763.2019.1677573

Source DB:  PubMed          Journal:  J Appl Stat        ISSN: 0266-4763            Impact factor:   1.416


  8 in total

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2.  Factors influencing the decline in lung density in a Danish lung cancer screening cohort.

Authors:  Saher B Shaker; Asger Dirksen; Pechin Lo; Lene T Skovgaard; Marleen de Bruijne; Jesper H Pedersen
Journal:  Eur Respir J       Date:  2012-03-09       Impact factor: 16.671

3.  A simulation system for biomarker evolution in neurodegenerative disease.

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Journal:  Med Image Anal       Date:  2015-08-15       Impact factor: 8.545

4.  Comment on "Numerical methods for stochastic differential equations".

Authors:  Kevin Burrage; Pamela Burrage; Desmond J Higham; Peter E Kloeden; Eckhard Platen
Journal:  Phys Rev E Stat Nonlin Soft Matter Phys       Date:  2006-12-22

5.  MCMC estimation of Markov models for ion channels.

Authors:  Ivo Siekmann; Larry E Wagner; David Yule; Colin Fox; David Bryant; Edmund J Crampin; James Sneyd
Journal:  Biophys J       Date:  2011-04-20       Impact factor: 4.033

6.  Bayesian inference for an illness-death model for stroke with cognition as a latent time-dependent risk factor.

Authors:  Ardo van den Hout; Jean-Paul Fox; Rinke H Klein Entink
Journal:  Stat Methods Med Res       Date:  2011-11-11       Impact factor: 3.021

Review 7.  The use of Gompertz models in growth analyses, and new Gompertz-model approach: An addition to the Unified-Richards family.

Authors:  Kathleen M C Tjørve; Even Tjørve
Journal:  PLoS One       Date:  2017-06-05       Impact factor: 3.240

Review 8.  Biomarkers in chronic obstructive pulmonary disease: confusing or useful?

Authors:  Robert A Stockley
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2014-02-07
  8 in total

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