The Pearson diffusions is a flexible class of diffusions defined by having linear drift and quadratic squared diffusion coefficient. It is demonstrated that for this class explicit statistical inference is feasible. Explicit optimal martingale estimating functions are found, and the corresponding estimators are shown to be consistent and asymptotically normal. The discussion covers GMM, quasi-likelihood, and nonlinear weighted least squares estimation too, and it is discussed how explicit likelihood or approximate likelihood inference is possible for the Pearson diffusions. A complete model classification is presented for the ergodic Pearson diffusions. The class of stationary distributions equals the full Pearson system of distributions. W...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
This thesis is composed of two parts. The first part is devoted to inference for discretely observed...
This paper provides methods for carrying out likelihood based inference for diffusion driven models,...
The Pearson diffusions is a flexible class of diffusions defined by having linear drift and quadrati...
: A new type of martingale estimating function is proposed for inference about classes of diffusion ...
This PhD thesis presents some new results on spectral properties and statistical analysis of ergodic...
This paper focuses on Pearson diffusions and the spectral high-order approximation of their related ...
AbstractThis paper focuses on Pearson diffusions and the spectral high-order approximation of their ...
Abstract The Pearson family of ergodic diffusions with a quadratic diffusion coefficient and a linea...
We consider ergodic diffusion processes for which the class of invariant measures is an exponential ...
A review is given of parametric estimation methods for discretely sampled mul- tivariate diffusion p...
In this article, general estimating functions for ergodic diffusions sam-pled at high frequency with...
Two classes of unbiased estimators of the density function of ergodic distribution for the diffusion...
The problem of nonparametric drift estimation for ergodic diffusions is studied from a Bayesian pers...
Certain aspects of maximum likelihood estimation for ergodic diffusions are studied via recently dev...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
This thesis is composed of two parts. The first part is devoted to inference for discretely observed...
This paper provides methods for carrying out likelihood based inference for diffusion driven models,...
The Pearson diffusions is a flexible class of diffusions defined by having linear drift and quadrati...
: A new type of martingale estimating function is proposed for inference about classes of diffusion ...
This PhD thesis presents some new results on spectral properties and statistical analysis of ergodic...
This paper focuses on Pearson diffusions and the spectral high-order approximation of their related ...
AbstractThis paper focuses on Pearson diffusions and the spectral high-order approximation of their ...
Abstract The Pearson family of ergodic diffusions with a quadratic diffusion coefficient and a linea...
We consider ergodic diffusion processes for which the class of invariant measures is an exponential ...
A review is given of parametric estimation methods for discretely sampled mul- tivariate diffusion p...
In this article, general estimating functions for ergodic diffusions sam-pled at high frequency with...
Two classes of unbiased estimators of the density function of ergodic distribution for the diffusion...
The problem of nonparametric drift estimation for ergodic diffusions is studied from a Bayesian pers...
Certain aspects of maximum likelihood estimation for ergodic diffusions are studied via recently dev...
We consider estimation of scalar functions that determine the dynamics of diffusion processes. It ha...
This thesis is composed of two parts. The first part is devoted to inference for discretely observed...
This paper provides methods for carrying out likelihood based inference for diffusion driven models,...