International audienceThis article concerns maximum-likelihood estimation for discrete time homogeneous nonparametric semi-Markov models with finite state space. In particular, we present the exact maximum-likelihood estimator of the semi-Markov kernel which governs the evolution of the semi-Markov chain (SMC). We study its asymptotic properties in the following cases: (i) for one observed trajectory, when the length of the observation tends to infinity, and (ii) for parallel observations of independent copies of an SMC censored at a fixed time, when the number of copies tends to infinity. In both cases, we obtain strong consistency, asymptotic normality, and asymptotic efficiency for every finite dimensional vector of this estimator. Final...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
Asymptotic properties of maximum (composite) likelihood estimators for partially ordered Markov mode...
We consider semiparametric models of semi-Markov processes with arbitrary state space. Assuming that...
International audienceThis article concerns maximum-likelihood estimation for discrete time homogene...
International audienceThis article concerns maximum-likelihood estimation for discrete time homogene...
I give a summary of the basic contributions of this study. We construct the maximum likelihood estim...
Paper FRA-F6International audienceWe consider an hidden Markov model (HMM) with multidimensional obs...
Le présent travail porte sur l’estimation d’un système en temps discret dont l’évolution est décrite...
Paper FRA-F6International audienceWe consider an hidden Markov model (HMM) with multidimensional obs...
AbstractUsing the maximum likelihood principle, nonparametric estimators are derived for discrete ti...
A semi-Markov process stays in state x for a time s and then jumps to state y according to a transi...
AbstractUsing the maximum likelihood principle, nonparametric estimators are derived for discrete ti...
We consider a recurrent Markov process which is an Ito ̂ semi-martingale. The Lévy kernel describes...
The development of statistical inference procedures for semi- Markov processes seems to be rather sc...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
Asymptotic properties of maximum (composite) likelihood estimators for partially ordered Markov mode...
We consider semiparametric models of semi-Markov processes with arbitrary state space. Assuming that...
International audienceThis article concerns maximum-likelihood estimation for discrete time homogene...
International audienceThis article concerns maximum-likelihood estimation for discrete time homogene...
I give a summary of the basic contributions of this study. We construct the maximum likelihood estim...
Paper FRA-F6International audienceWe consider an hidden Markov model (HMM) with multidimensional obs...
Le présent travail porte sur l’estimation d’un système en temps discret dont l’évolution est décrite...
Paper FRA-F6International audienceWe consider an hidden Markov model (HMM) with multidimensional obs...
AbstractUsing the maximum likelihood principle, nonparametric estimators are derived for discrete ti...
A semi-Markov process stays in state x for a time s and then jumps to state y according to a transi...
AbstractUsing the maximum likelihood principle, nonparametric estimators are derived for discrete ti...
We consider a recurrent Markov process which is an Ito ̂ semi-martingale. The Lévy kernel describes...
The development of statistical inference procedures for semi- Markov processes seems to be rather sc...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
We consider parameter estimation in finite hidden state space Markov models with time-dependent inho...
Asymptotic properties of maximum (composite) likelihood estimators for partially ordered Markov mode...
We consider semiparametric models of semi-Markov processes with arbitrary state space. Assuming that...