Certains fichiers-sources (ptext_t) ne sont pas acceptés par HALInternational audience— The problem of estimating the probability p = P (g(X) ≤ 0) is considered when X represents a multivariate stochastic input of a monotonic function g. First, a heuristic method to bound p, originally proposed by de Rocquigny (2009), is formally described, involving a special-ized design of numerical experiments. Then a statistical estimation of p is considered based on a sequential stochastic exploration of the input space. A maximum likelihood estimator of p based on successive dependent Bernoulli data is defined and its theoretical convergence properties are studied. Under intuitive or mild conditions, the estimation is faster and more robust than the t...
The purpose of this thesis is to develop Bayesian methodology together with the proper computational...
AbstractThis paper deals with the estimate of errors introduced by finite sampling in Monte Carlo ev...
[[abstract]]A stochastic program SP with solution value z* can be approximately solved by sampling n...
Certains fichiers-sources (ptext_t) ne sont pas acceptés par HALInternational audience— The problem ...
Certains fichiers-sources (ptext_t) ne sont pas acceptés par HALInternational audience— The problem ...
International audienceThis article investigates the theoretical convergence properties of the estima...
International audienceThis article investigates the theoretical convergence properties of the estima...
A novel Bayesian Monte Carlo method for monotonic models (BMCM) is described in this paper. The BMCM...
A novel Bayesian Monte Carlo method for monotonic models (BMCM) is described in this paper. The BMCM...
In this note we show that the Monte Carlo EM algorithm, appropriately constructed with importance re...
Conditioning Gaussian processes (GPs) by inequality constraints gives more realistic models. This th...
This paper deals with the estimate of errors introduced by finite sampling in Monte Carlo evaluation...
International audienceIn this article, we consider a stochastic numerical simulator to assess the im...
This paper deals with the estimate of errors introduced by finite sampling in Monte Carlo evaluation...
This paper deals with the estimate of errors introduced by finite sampling in Monte Carlo evaluation...
The purpose of this thesis is to develop Bayesian methodology together with the proper computational...
AbstractThis paper deals with the estimate of errors introduced by finite sampling in Monte Carlo ev...
[[abstract]]A stochastic program SP with solution value z* can be approximately solved by sampling n...
Certains fichiers-sources (ptext_t) ne sont pas acceptés par HALInternational audience— The problem ...
Certains fichiers-sources (ptext_t) ne sont pas acceptés par HALInternational audience— The problem ...
International audienceThis article investigates the theoretical convergence properties of the estima...
International audienceThis article investigates the theoretical convergence properties of the estima...
A novel Bayesian Monte Carlo method for monotonic models (BMCM) is described in this paper. The BMCM...
A novel Bayesian Monte Carlo method for monotonic models (BMCM) is described in this paper. The BMCM...
In this note we show that the Monte Carlo EM algorithm, appropriately constructed with importance re...
Conditioning Gaussian processes (GPs) by inequality constraints gives more realistic models. This th...
This paper deals with the estimate of errors introduced by finite sampling in Monte Carlo evaluation...
International audienceIn this article, we consider a stochastic numerical simulator to assess the im...
This paper deals with the estimate of errors introduced by finite sampling in Monte Carlo evaluation...
This paper deals with the estimate of errors introduced by finite sampling in Monte Carlo evaluation...
The purpose of this thesis is to develop Bayesian methodology together with the proper computational...
AbstractThis paper deals with the estimate of errors introduced by finite sampling in Monte Carlo ev...
[[abstract]]A stochastic program SP with solution value z* can be approximately solved by sampling n...