Hypoelliptic diffusion processes can be used to model a variety of phenomena in applications ranging from molecular dynamics to audio signal analysis. We study parameter estimation for such processes in situations where we observe some components of the solution at discrete times. Since exact likelihoods for the transition densities are typically not known, approximations are used that are expected to work well in the limit of small intersample times Δt and large total observation times N Δt. Hypoellipticity together with partial observation leads to ill conditioning requiring a judicious combination of approximate likelihoods for the various parameters to be estimated. We combine these in a deterministic scan Gibbs sampler alternating betw...
For a one-dimensional diffusion process View the MathML source, we suppose that X(t) is hidden if it...
A series of recent articles introduced a method to construct stochastic partial differential equatio...
We consider online analysis of systems of stochastic differential equations (SDEs), from high-frequ...
Hypoelliptic diffusion processes can be used to model a variety of phenomena in applications ranging...
International audienceThe statistical problem of parameter estimation in partially observed hypoel-l...
International audienceWe deal with the problem of parameter estimation in stochastic differential eq...
Multi-dimensional Stochastic Differential Equations (SDEs) are a powerful tool to describe dynamics ...
International audienceMultidimensional hypoelliptic diffusions arise naturally in different fields, ...
International audienceParametric estimation of two-dimensional hypoelliptic diffusions is considered...
AbstractParametric estimation of two-dimensional hypoelliptic diffusions is considered when complete...
Noisy discretely observed diffusion processes with random drift function parameters are considered. ...
In this paper we provide a consistency result for the MLE for partially observed diffusion processes...
We consider the problem of inference for nonlinear, multivariate diffusion processes, satisfying Itô...
Diffusion processes are a family of continuous-time continuous-state stochastic processes that are i...
Diffusion processes provide a natural way of modelling a variety of physical and economic phenomena...
For a one-dimensional diffusion process View the MathML source, we suppose that X(t) is hidden if it...
A series of recent articles introduced a method to construct stochastic partial differential equatio...
We consider online analysis of systems of stochastic differential equations (SDEs), from high-frequ...
Hypoelliptic diffusion processes can be used to model a variety of phenomena in applications ranging...
International audienceThe statistical problem of parameter estimation in partially observed hypoel-l...
International audienceWe deal with the problem of parameter estimation in stochastic differential eq...
Multi-dimensional Stochastic Differential Equations (SDEs) are a powerful tool to describe dynamics ...
International audienceMultidimensional hypoelliptic diffusions arise naturally in different fields, ...
International audienceParametric estimation of two-dimensional hypoelliptic diffusions is considered...
AbstractParametric estimation of two-dimensional hypoelliptic diffusions is considered when complete...
Noisy discretely observed diffusion processes with random drift function parameters are considered. ...
In this paper we provide a consistency result for the MLE for partially observed diffusion processes...
We consider the problem of inference for nonlinear, multivariate diffusion processes, satisfying Itô...
Diffusion processes are a family of continuous-time continuous-state stochastic processes that are i...
Diffusion processes provide a natural way of modelling a variety of physical and economic phenomena...
For a one-dimensional diffusion process View the MathML source, we suppose that X(t) is hidden if it...
A series of recent articles introduced a method to construct stochastic partial differential equatio...
We consider online analysis of systems of stochastic differential equations (SDEs), from high-frequ...