Continuous time hidden Markov Model with bidimensional observed process

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Toubkal : Le Catalogue National des Thèses et Mémoires

Continuous time hidden Markov Model with bidimensional observed process

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dc.contributor.author Belmaâti, Aziza
dc.description.collaborator Jarrar, O. Abderrahmane (Président)
dc.description.collaborator Omari, Lahcen (Directeur de la thèse)
dc.description.collaborator Rais, Noureddine (Rapporteur)
dc.description.collaborator Nasroallah, Abdelaziz (Rapporteur)
dc.description.collaborator Kissami, Abdelghani (Jury)
dc.description.collaborator Ouhbi, Brahim (Jury)
dc.description.collaborator Elmaroufy, Hamid (Jury)
dc.date.accessioned 2010-03-22T10:17:38Z
dc.date.available 2010-03-22T10:17:38Z
dc.date.issued 2008-03-19
dc.identifier.uri http://hdl.handle.net/123456789/5659
dc.description.abstract A hidden Markov process (HMP) is a bivariate process (state process and observed process) de¯ned such that both of the joint process and the marginal state process are markovian. It's characterized by a special structure of its transition kernel which allows to deduce its statistical properties from the similar properties of the underlying state process. The use of HMP as a model, commonly referred to as hidden Markov model (HMM), is frequently restricted to the study of one or more unobserved cate- gorical variables for which only indirected measurements from a unidimensional space are available, but here we allow relaxation of this restriction. We will present a class of HMM that consists of a background process in continu- ous time with a bidimensional observed process since the indirected measurements can be related to more than one variable. The analysis will be illustrated by an example of hidden Markov models with binormal observed process. A likelihood ratio test is taken to compare the continuous time hidden HMM with bidimensional observed pro- cess versus the continuous time HMM with unidimensional observed process. The test provides the usefulness of the ¯rst model instead of the second one. Estimation of quantities of interest is performed using the Gibbs sampler algorithm within Metropolis accept-reject step, which is a stochastic algorithm belonging to the families of Monte Carlo Markov Chain methods. en
dc.format.extent 26112 bytes
dc.format.mimetype application/msword
dc.language.iso en en
dc.publisher Université Sidi Mohamed Ben Abdellah, Faculté des Sciences Dhar Mahraz, Fès en
dc.relation.ispartofseries Th-519/BEL
dc.subject Statistique en
dc.subject Informatique en
dc.subject Markov process en
dc.subject Continuous time hidden Markov process en
dc.subject Bidimensional observed process en
dc.subject Monte Carlo Markov Chain method en
dc.subject Gibbs sampler algorithm en
dc.subject Metropolis Hastings algorithm en
dc.title Continuous time hidden Markov Model with bidimensional observed process en
dc.description.laboratoire Statistique et Informatique, (UFR)

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