Computational uncertainty quantication in a probabilistic setting is a special case of a parametric problem. Parameter dependent state vectors lead via association to a linear operator to analogues of covariance, its spectral decomposition, and the associated Karhunen-Loève expansion. From this one obtains a generalised tensor representation. The parameter in question may be a tuple of numbers, a function, a stochastic process, or a random tensor field. The tensor factorisation may be cascaded, leading to tensors of higher degree. When carried on a discretised level, such factorisations in the form of low-rank approximations lead to very sparse representations of the high dimensional quantities involved. Updating of uncertainty for new info...
Plenary LectureInternational audienceThe paper deals with the statistical inverse problem for the id...
International audienceThis paper deals with data uncertainties and model uncertainties issues in com...
A flexible non-intrusive approach to parametric uncertainty quantification problems is developed, ai...
Part 2: UQ TheoryInternational audienceComputational uncertainty quantification in a probabilistic s...
An uncertain (scalar, vector, tensor) field is usually perceived as a discrete random field with a p...
This paper aims at handling high dimensional uncertainty propagation problems by proposing a tensor ...
Bayesian networks are a popular model for reasoning under uncertainty. We study the problem of effic...
We develop a new fuzzy arithmetic framework for efficient possibilistic uncertainty quantification. ...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
Non-intrusive polynomial chaos expansion (PCE) and stochastic collocation (SC) meth-ods are attracti...
his paper examines a completely non-intrusive, sample-based method for the computation offunctional ...
The rising computational and memory demands of machine learning models, particularly in resource-con...
International audienceA nonparametric probabilistic approach for modeling uncertainties in projectio...
Quantification of stochastic or quantum systems by a joint probability density or wave function is a...
We consider Uncertainty Quanti¿cation (UQ) by expanding the solution in so-called generalized Polyno...
Plenary LectureInternational audienceThe paper deals with the statistical inverse problem for the id...
International audienceThis paper deals with data uncertainties and model uncertainties issues in com...
A flexible non-intrusive approach to parametric uncertainty quantification problems is developed, ai...
Part 2: UQ TheoryInternational audienceComputational uncertainty quantification in a probabilistic s...
An uncertain (scalar, vector, tensor) field is usually perceived as a discrete random field with a p...
This paper aims at handling high dimensional uncertainty propagation problems by proposing a tensor ...
Bayesian networks are a popular model for reasoning under uncertainty. We study the problem of effic...
We develop a new fuzzy arithmetic framework for efficient possibilistic uncertainty quantification. ...
summary:Bayesian networks are a popular model for reasoning under uncertainty. We study the problem ...
Non-intrusive polynomial chaos expansion (PCE) and stochastic collocation (SC) meth-ods are attracti...
his paper examines a completely non-intrusive, sample-based method for the computation offunctional ...
The rising computational and memory demands of machine learning models, particularly in resource-con...
International audienceA nonparametric probabilistic approach for modeling uncertainties in projectio...
Quantification of stochastic or quantum systems by a joint probability density or wave function is a...
We consider Uncertainty Quanti¿cation (UQ) by expanding the solution in so-called generalized Polyno...
Plenary LectureInternational audienceThe paper deals with the statistical inverse problem for the id...
International audienceThis paper deals with data uncertainties and model uncertainties issues in com...
A flexible non-intrusive approach to parametric uncertainty quantification problems is developed, ai...