International audienceIn this paper, the problem of identifying a hidden Markov model (HMM) with general state space, e.g. a partially observed diffusion process, is considered. A particle implementation of the recursive maximum likelihood estimator for a parameter in the transition kernel of the Markov chain is presented. The key assumption is that the derivative of the transition kernel w.r.t. the parameter has a probabilistic interpretation, suitable for Monte Carlo simulation. Examples are given to show that this assumption is satisfied in quite general situations. As a result, the linear tangent filter, i.e. the derivative of the filter w.r.t. the parameter, is absolutely continuous w.r.t. the filter and the idea is to jointly approxim...
We develop a Bayesian inference method for diffusions observed discretely and with noise, which is f...
The purpose of this paper is to study some statistical problems: parameter estimation, binary detect...
International audienceWe address the recursive computation of the a posteriori filtering probability...
International audienceIn this paper, the problem of identifying a hidden Markov model (HMM) with gen...
In this paper, the problem of identifying a hidden Markov model (HMM) with general state space, e.g...
This paper focuses on the estimation of smoothing distributions in general state space models where ...
We revisit the problem of estimating the parameters of a partially observed diffusion process, consi...
We analyse the performance of a recursive Monte Carlo method for the Bayesian estimation of the stat...
We consider a hidden Markov model (HMM) with multidimensional observations, and where the coefficien...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Documento depositado en el repositorio arXiv.org. Versión: arXiv:1603.09005v1 [stat.CO]We analyse th...
AbstractTwo algorithms are compared for maximizing the likelihood function associated with parameter...
We address the recursive computation of the a posteriori filtering probability density function (pdf...
Diffusion processes observed partially, typically at discrete timepoints and possibly with observati...
This thesis concerns estimation in partially observed continuous and discrete time Markov models and...
We develop a Bayesian inference method for diffusions observed discretely and with noise, which is f...
The purpose of this paper is to study some statistical problems: parameter estimation, binary detect...
International audienceWe address the recursive computation of the a posteriori filtering probability...
International audienceIn this paper, the problem of identifying a hidden Markov model (HMM) with gen...
In this paper, the problem of identifying a hidden Markov model (HMM) with general state space, e.g...
This paper focuses on the estimation of smoothing distributions in general state space models where ...
We revisit the problem of estimating the parameters of a partially observed diffusion process, consi...
We analyse the performance of a recursive Monte Carlo method for the Bayesian estimation of the stat...
We consider a hidden Markov model (HMM) with multidimensional observations, and where the coefficien...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Documento depositado en el repositorio arXiv.org. Versión: arXiv:1603.09005v1 [stat.CO]We analyse th...
AbstractTwo algorithms are compared for maximizing the likelihood function associated with parameter...
We address the recursive computation of the a posteriori filtering probability density function (pdf...
Diffusion processes observed partially, typically at discrete timepoints and possibly with observati...
This thesis concerns estimation in partially observed continuous and discrete time Markov models and...
We develop a Bayesian inference method for diffusions observed discretely and with noise, which is f...
The purpose of this paper is to study some statistical problems: parameter estimation, binary detect...
International audienceWe address the recursive computation of the a posteriori filtering probability...