AbstractOur primary aim is to “build” versions of generalised Gaussian processes from simple, elementary components in such a way that as many as possible of the esoteric properties of these elusive objects become intuitive. For generalised Gaussian processes, or fields, indexed by smooth functions or measures on Rd, our building blocks will be simple Markov processes whose state space is Rd. Roughly speaking, by summing functions of the local times of the Markov processes we shall, via a central limit theorem type of result, obtain the Gaussian field.This central limit result, together with related results indicating how additive functionals of the Markov processes generate additive functionals of the fields, yield considerable insight int...
This paper deals with the relationship between two-dimensional parameter Gaussian random fields veri...
We discuss Gaussian generalized random fields indexed by smooth sections of vector bundles with res...
AbstractIn the present paper it is shown that the central limit theorem holds for some non-linear fu...
AbstractOur primary aim is to “build” versions of generalised Gaussian processes from simple, elemen...
In this paper we started by explaining what a Markov chain is. After this we defined some key concep...
International audienceWe introduce a general method, which combines the one developed by the authors...
22 pagesThis paper establishes a central limit theorem and an invariance principle for a wide class ...
International audienceWe introduce a general method, which combines the one developed by the authors...
International audienceWe introduce a general method, which combines the one developed by the authors...
International audienceWe introduce a general method, which combines the one developed by the authors...
22 pagesThis paper establishes a central limit theorem and an invariance principle for a wide class ...
AbstractThis paper establishes a central limit theorem and an invariance principle for a wide class ...
International audienceWe introduce a general method, which combines the one developed by the authors...
Stochastic Analysis for Gaussian Random Processes and Fields: With Applications presents Hilbert spa...
AbstractTo every Markov process with a symmetric transition density, there correspond two random fie...
This paper deals with the relationship between two-dimensional parameter Gaussian random fields veri...
We discuss Gaussian generalized random fields indexed by smooth sections of vector bundles with res...
AbstractIn the present paper it is shown that the central limit theorem holds for some non-linear fu...
AbstractOur primary aim is to “build” versions of generalised Gaussian processes from simple, elemen...
In this paper we started by explaining what a Markov chain is. After this we defined some key concep...
International audienceWe introduce a general method, which combines the one developed by the authors...
22 pagesThis paper establishes a central limit theorem and an invariance principle for a wide class ...
International audienceWe introduce a general method, which combines the one developed by the authors...
International audienceWe introduce a general method, which combines the one developed by the authors...
International audienceWe introduce a general method, which combines the one developed by the authors...
22 pagesThis paper establishes a central limit theorem and an invariance principle for a wide class ...
AbstractThis paper establishes a central limit theorem and an invariance principle for a wide class ...
International audienceWe introduce a general method, which combines the one developed by the authors...
Stochastic Analysis for Gaussian Random Processes and Fields: With Applications presents Hilbert spa...
AbstractTo every Markov process with a symmetric transition density, there correspond two random fie...
This paper deals with the relationship between two-dimensional parameter Gaussian random fields veri...
We discuss Gaussian generalized random fields indexed by smooth sections of vector bundles with res...
AbstractIn the present paper it is shown that the central limit theorem holds for some non-linear fu...