AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on an approximate likelihood given by the discrete observation is treated when the diffusion coefficients are unknown and the condition for “rapidly increasing experimental design” is broken. The asymptotic normality of the joint distribution of the maximum likelihood estimator of the unknown parameter in the drift term and an estimator of the diffusion coefficient matrix is proved. We prove the weak convergence of the likelihood ratio random field, which serves to show the asymptotic behavior of the likelihood ratio tests with restrictions
A short review of diffusion parameter estimations methods from discrete observations is presented. ...
For a one-dimensional diffusion process View the MathML source, we suppose that X(t) is hidden if it...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on a...
The maximum likelihood estimation of the unknown parameter of a diffusion process based on an approx...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
AbstractLet θ be the unknown parameter in the drift coefficient of a certain class of nonstationary ...
We assume that the diffusion X satisfies a stochastic differential equation of the form: dXt=μ(Xt,θ)...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
A short review of diffusion parameter estimations methods from discrete observations is presented. ...
AbstractWe consider adaptive maximum likelihood type estimation of both drift and diffusion coeffici...
International audienceWe consider $N$ independent stochastic processes $(X_i(t), t\in [0,T_i])$, $i=...
This paper introduces a Monte Carlo method for maximum likelihood inference in the context of discre...
Noisy discretely observed diffusion processes with random drift function parameters are considered. ...
AbstractFor a one-dimensional diffusion process X={X(t);0≤t≤T}, we suppose that X(t) is hidden if it...
A short review of diffusion parameter estimations methods from discrete observations is presented. ...
For a one-dimensional diffusion process View the MathML source, we suppose that X(t) is hidden if it...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
AbstractThe maximum likelihood estimation of the unknown parameter of a diffusion process based on a...
The maximum likelihood estimation of the unknown parameter of a diffusion process based on an approx...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
AbstractLet θ be the unknown parameter in the drift coefficient of a certain class of nonstationary ...
We assume that the diffusion X satisfies a stochastic differential equation of the form: dXt=μ(Xt,θ)...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
A short review of diffusion parameter estimations methods from discrete observations is presented. ...
AbstractWe consider adaptive maximum likelihood type estimation of both drift and diffusion coeffici...
International audienceWe consider $N$ independent stochastic processes $(X_i(t), t\in [0,T_i])$, $i=...
This paper introduces a Monte Carlo method for maximum likelihood inference in the context of discre...
Noisy discretely observed diffusion processes with random drift function parameters are considered. ...
AbstractFor a one-dimensional diffusion process X={X(t);0≤t≤T}, we suppose that X(t) is hidden if it...
A short review of diffusion parameter estimations methods from discrete observations is presented. ...
For a one-dimensional diffusion process View the MathML source, we suppose that X(t) is hidden if it...
The transition density of a diffusion process does not admit an explicit expression in general, whic...