We study a new parametric approach for hidden discrete-time diffusion models. This method is based on contrast minimization and deconvolution and leads to estimate a large class of stochastic models with nonlinear drift and nonlinear diffusion. It can be applied, for example, for ecological and financial state space models. After proving consistency and asymptotic normality of the estimation, leading to asymptotic confidence intervals, we provide a thorough numerical study, which compares many classical methods used in practice (Non Linear Least Square estimator, Monte Carlo Expectation Maxi-mization Likelihood estimator and Bayesian estimators) to estimate stochastic volatility model. We prove that our estimator clearly outperforms the Max...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
Diffusion processes observed partially, typically at discrete timepoints and possibly with observati...
International audienceABSTRACT. This paper develops a new contrast process for parametric inference ...
A review is given of parametric estimation methods for discretely sampled mul- tivariate diffusion p...
The objective of this paper is parametric inference for stochastic volatility models. We consider a ...
International audienceWhen a continuous-time diffusion is observed only at discrete times with measu...
International audienceWhen a continuous-time diffusion is observed only at discrete times with measu...
International audienceWhen a continuous-time diffusion is observed only at discrete times with measu...
International audienceWhen a continuous-time diffusion is observed only at discrete times with measu...
AbstractFor a one-dimensional diffusion process X={X(t);0≤t≤T}, we suppose that X(t) is hidden if it...
We consider the following hidden Markov chain problem: estimate the finite-dimensional parameter [th...
ABSTRACT. This paper develops a new contrast process for parametric inference of general hidden Mark...
This paper deals with parameter estimation for stochastic volatility models. We consider a two-dimen...
This paper provides methods for carrying out likelihood based inference for diffusion driven models,...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
Diffusion processes observed partially, typically at discrete timepoints and possibly with observati...
International audienceABSTRACT. This paper develops a new contrast process for parametric inference ...
A review is given of parametric estimation methods for discretely sampled mul- tivariate diffusion p...
The objective of this paper is parametric inference for stochastic volatility models. We consider a ...
International audienceWhen a continuous-time diffusion is observed only at discrete times with measu...
International audienceWhen a continuous-time diffusion is observed only at discrete times with measu...
International audienceWhen a continuous-time diffusion is observed only at discrete times with measu...
International audienceWhen a continuous-time diffusion is observed only at discrete times with measu...
AbstractFor a one-dimensional diffusion process X={X(t);0≤t≤T}, we suppose that X(t) is hidden if it...
We consider the following hidden Markov chain problem: estimate the finite-dimensional parameter [th...
ABSTRACT. This paper develops a new contrast process for parametric inference of general hidden Mark...
This paper deals with parameter estimation for stochastic volatility models. We consider a two-dimen...
This paper provides methods for carrying out likelihood based inference for diffusion driven models,...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
Diffusion processes observed partially, typically at discrete timepoints and possibly with observati...
International audienceABSTRACT. This paper develops a new contrast process for parametric inference ...