International audienceThis paper is dedicated to the investigation of a new numerical method to approximate the optimal stopping problem for a discrete-time continuous state space Markov chain under partial observations. It is based on a two-step discretization procedure based on optimal quantization. First,we discretize the state space of the unobserved variable by quantizing an underlying reference measure. Then we jointly discretize the resulting approximate filter and the observation process. We obtain a fully computable approximation of the value function with explicit error bounds for its convergence towards the true value fonction
We consider a problem of change point detection for a continuous-time stochastic process in the fami...
In this paper we study the well-know optimal stopping problem applied to a general family of continu...
The present paper deals with an optimal stopping problem which permits the cost of obserbation in th...
International audienceThis paper is dedicated to the investigation of a new numerical method to appr...
We present an approximation method for discrete time nonlinear filtering in view of solving dynamic ...
Benôıte de Saporta François Dufour This paper deals with the optimal stopping problem under partia...
International audienceThis paper deals with the optimal stopping problem under partial observation f...
AbstractWe study the numerical solution of nonlinear partially observed optimal stopping problems. T...
The aim of this paper is to propose a computational method for optimal stopping of a piecewise deter...
This thesis deals with the explicit solution of optimal stopping problems with infinite time horizon...
In this thesis we consider optimal stopping problems for continuous-time Markov chains, evaluated un...
We study the numerical solution of nonlinear partially observed optimal stopping problems. The syste...
This paper is concerned with the solution of the optimal stopping problem associated to the valuatio...
Piecewise-deterministic Markov processes (PDMP's) have been introduced by M.H.A. Davis as a general ...
AbstractWe consider large classes of continuous time optimal stopping problems for which we establis...
We consider a problem of change point detection for a continuous-time stochastic process in the fami...
In this paper we study the well-know optimal stopping problem applied to a general family of continu...
The present paper deals with an optimal stopping problem which permits the cost of obserbation in th...
International audienceThis paper is dedicated to the investigation of a new numerical method to appr...
We present an approximation method for discrete time nonlinear filtering in view of solving dynamic ...
Benôıte de Saporta François Dufour This paper deals with the optimal stopping problem under partia...
International audienceThis paper deals with the optimal stopping problem under partial observation f...
AbstractWe study the numerical solution of nonlinear partially observed optimal stopping problems. T...
The aim of this paper is to propose a computational method for optimal stopping of a piecewise deter...
This thesis deals with the explicit solution of optimal stopping problems with infinite time horizon...
In this thesis we consider optimal stopping problems for continuous-time Markov chains, evaluated un...
We study the numerical solution of nonlinear partially observed optimal stopping problems. The syste...
This paper is concerned with the solution of the optimal stopping problem associated to the valuatio...
Piecewise-deterministic Markov processes (PDMP's) have been introduced by M.H.A. Davis as a general ...
AbstractWe consider large classes of continuous time optimal stopping problems for which we establis...
We consider a problem of change point detection for a continuous-time stochastic process in the fami...
In this paper we study the well-know optimal stopping problem applied to a general family of continu...
The present paper deals with an optimal stopping problem which permits the cost of obserbation in th...