We state large deviations for small time of a pinned n-conditional Gaussian process, i.e. the bridge of a Gaussian process conditioned to stay in n fixed points at n fixed past instants, by letting all the past monitoring instants to depend on the small parameter going to 0. Differently from what already developed in Caramellino and Pacchiarotti (Adv Appl Probab 40:424–453, 2008), this procedure is able to catch the dependence on the past observations. We apply the results to numerical experiments that involve the fractional Brownian motion, for the computation of the hitting probability through Monte Carlo methods
Abstract. For a scalar Gaussian process B on R+ with a prescribed general vari-ance function γ2 (r) ...
We use process level large deviation analysis to obtain the rate function for a general family of oc...
International audienceWe present a systematic analysis of stochastic processes conditioned on an emp...
We state large deviations for small time of a pinned n-conditional Gaussian process, i.e. the bridge...
The paper deals with the asymptotic behavior of the bridge of a Gaussian process conditioned to stay...
The problem of (pathwise) large deviations for conditionally continuous Gaussian processes is invest...
We study the asymptotic behavior of a Gaussian process conditioned to n linear functionals of its pa...
In reliability theory and network performance analysis a relevant role is played by the time needed ...
The large deviations principle for Gaussian measures in Banach space is given by the generalized Sch...
This proposal is concerned with applications of Monte Carlo to problems in physics and chemistry whe...
This book presents broadly applicable methods for the large deviation and moderate deviation analysi...
Abstract Consider events of the form {Zs≥ζ(s),sset membership, variantS}, where Z is a continuous Ga...
LetX= (X(t))(t >= 0)(X(0) = 0) be a continuous centered Gaussian process on a probability space (...
International audienceWe introduce and test an algorithm that adaptively estimates large deviation f...
The non linear filtering problem consists in computing the conditional distributions of a Markov sig...
Abstract. For a scalar Gaussian process B on R+ with a prescribed general vari-ance function γ2 (r) ...
We use process level large deviation analysis to obtain the rate function for a general family of oc...
International audienceWe present a systematic analysis of stochastic processes conditioned on an emp...
We state large deviations for small time of a pinned n-conditional Gaussian process, i.e. the bridge...
The paper deals with the asymptotic behavior of the bridge of a Gaussian process conditioned to stay...
The problem of (pathwise) large deviations for conditionally continuous Gaussian processes is invest...
We study the asymptotic behavior of a Gaussian process conditioned to n linear functionals of its pa...
In reliability theory and network performance analysis a relevant role is played by the time needed ...
The large deviations principle for Gaussian measures in Banach space is given by the generalized Sch...
This proposal is concerned with applications of Monte Carlo to problems in physics and chemistry whe...
This book presents broadly applicable methods for the large deviation and moderate deviation analysi...
Abstract Consider events of the form {Zs≥ζ(s),sset membership, variantS}, where Z is a continuous Ga...
LetX= (X(t))(t >= 0)(X(0) = 0) be a continuous centered Gaussian process on a probability space (...
International audienceWe introduce and test an algorithm that adaptively estimates large deviation f...
The non linear filtering problem consists in computing the conditional distributions of a Markov sig...
Abstract. For a scalar Gaussian process B on R+ with a prescribed general vari-ance function γ2 (r) ...
We use process level large deviation analysis to obtain the rate function for a general family of oc...
International audienceWe present a systematic analysis of stochastic processes conditioned on an emp...