International audienceWe consider a bidimensional Ornstein-Uhlenbeck process to describe the tissue microvascularisation in anti-cancer therapy. Data are discrete, partial and noisy observations of this stochastic differential equation (SDE). Our aim is the estimation of the SDE parameters. We use the main advantage of a one-dimensional observation to obtain an easy way to compute the exact likelihood using the Kalman filter recursion. We also propose a recursive computation of the gradient and hessian of the log-likelihood based on Kalman filtering, which allows to implement an easy numerical maximisation of the likelihood and the exact maximum likelihood estimator (MLE). Furthermore, we establish the link between the observations and an A...
International audienceWe study a non-linear hidden Markov model, where the process of interest is th...
Noisy discretely observed diffusion processes with random drift function parameters are considered. ...
Consider a diffusion process $(x_t, t \ge 0)$ given as the solution of a stochastic differential equ...
The goal of this thesis is to estimate parameters in a bidimensional Ornstein-Uhlenbeck process, nam...
Diffusion models observed with noise are widely used in biology and in finance, to take into account...
We study the problem of estimating the parameters of an Ornstein-Uhlenbeck (OU) process that is the ...
AbstractAn asymptotic analysis is presented for estimation in the three-parameter Ornstein-Uhlenbeck...
International audienceWe investigate the asymptotic behavior of the maximum likelihood estimators of...
Given Y a graph process defined by an incomplete information observation of a multivariate Ornstein-...
Given Y a graph process defined by an incomplete information observation of a multivariate Ornstein-...
International audienceWe investigate the asymptotic behavior of the maximum likelihood estimators of...
International audienceWe investigate the asymptotic behavior of the maximum likelihood estimators of...
In this paper, we derive elementary M- and optimally robust asymptotic linear (AL)-estimates for the...
In this paper, we derive elementary M- and optimally robust asymptotic linear (AL)-estimates for the...
In this paper, we focus on estimation methods for non-linear mixed effects (NLME) models with stocha...
International audienceWe study a non-linear hidden Markov model, where the process of interest is th...
Noisy discretely observed diffusion processes with random drift function parameters are considered. ...
Consider a diffusion process $(x_t, t \ge 0)$ given as the solution of a stochastic differential equ...
The goal of this thesis is to estimate parameters in a bidimensional Ornstein-Uhlenbeck process, nam...
Diffusion models observed with noise are widely used in biology and in finance, to take into account...
We study the problem of estimating the parameters of an Ornstein-Uhlenbeck (OU) process that is the ...
AbstractAn asymptotic analysis is presented for estimation in the three-parameter Ornstein-Uhlenbeck...
International audienceWe investigate the asymptotic behavior of the maximum likelihood estimators of...
Given Y a graph process defined by an incomplete information observation of a multivariate Ornstein-...
Given Y a graph process defined by an incomplete information observation of a multivariate Ornstein-...
International audienceWe investigate the asymptotic behavior of the maximum likelihood estimators of...
International audienceWe investigate the asymptotic behavior of the maximum likelihood estimators of...
In this paper, we derive elementary M- and optimally robust asymptotic linear (AL)-estimates for the...
In this paper, we derive elementary M- and optimally robust asymptotic linear (AL)-estimates for the...
In this paper, we focus on estimation methods for non-linear mixed effects (NLME) models with stocha...
International audienceWe study a non-linear hidden Markov model, where the process of interest is th...
Noisy discretely observed diffusion processes with random drift function parameters are considered. ...
Consider a diffusion process $(x_t, t \ge 0)$ given as the solution of a stochastic differential equ...