International audienceWhile switching Markov state-space models arise in many applied science applications like signal processing, bioinformatics, etc., it is often difficult to establish their identifiability which is essential for parameters estimation. This paper discusses the simple case in which the unknown continuous state and the observations are scalars. We demonstrate that if a prior information relating the observations to the unknown continuous state at a time t0 is available, and if the Markov chain is irreducible and aperiodic, the set of the model parameters will be " globally structurally identifiable ". In addition, we show that under these constraints, the model parameters can be efficiently estimated by an EM algorithm.Les...
International audienceThis paper deals with order identification for Markov chains with Markov regim...
Markov models have been a keystone in Artificial Intelligence for many decades. However, they remai...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
International audienceWhile switching Markov state-space models arise in many applied science applic...
Switching Markov State-Space Models (SMSSM) are linear models whose parameters randomly change over...
Markov switching models are a family of models that introduces time variation in the parameters in t...
We present a constructive proof of (nonparametric) identication of the parameters of a bivariate Mar...
International audienceThe forgetting of the initial distribution for discrete Hidden Markov Models (...
Dynamic models with parameters that are allowed to depend on the state of a hidden Markov chain have...
Submitted by Elaine Almeida (elaine.almeida@nce.ufrj.br) on 2017-03-17T11:53:15Z No. of bitstreams:...
Référence du projet ANR BIODIVAGRIM : ANR 07 BDIV 02Markov models represent a powerful way to approa...
Continuous-time Markov chains have long served as exemplary low-level models for an array of system...
International audienceThis work concerns estimation of linear autoregressive models with Markov-swit...
This thesis provides a set of novel Monte Carlo methods to perform Bayesian inference, with an empha...
30 pages, 8 figuresMany nonlinear time series models have been proposed in the last decades. Among t...
International audienceThis paper deals with order identification for Markov chains with Markov regim...
Markov models have been a keystone in Artificial Intelligence for many decades. However, they remai...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
International audienceWhile switching Markov state-space models arise in many applied science applic...
Switching Markov State-Space Models (SMSSM) are linear models whose parameters randomly change over...
Markov switching models are a family of models that introduces time variation in the parameters in t...
We present a constructive proof of (nonparametric) identication of the parameters of a bivariate Mar...
International audienceThe forgetting of the initial distribution for discrete Hidden Markov Models (...
Dynamic models with parameters that are allowed to depend on the state of a hidden Markov chain have...
Submitted by Elaine Almeida (elaine.almeida@nce.ufrj.br) on 2017-03-17T11:53:15Z No. of bitstreams:...
Référence du projet ANR BIODIVAGRIM : ANR 07 BDIV 02Markov models represent a powerful way to approa...
Continuous-time Markov chains have long served as exemplary low-level models for an array of system...
International audienceThis work concerns estimation of linear autoregressive models with Markov-swit...
This thesis provides a set of novel Monte Carlo methods to perform Bayesian inference, with an empha...
30 pages, 8 figuresMany nonlinear time series models have been proposed in the last decades. Among t...
International audienceThis paper deals with order identification for Markov chains with Markov regim...
Markov models have been a keystone in Artificial Intelligence for many decades. However, they remai...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...