This paper aims at handling high dimensional uncertainty propagation problems by proposing a tensor product approximation method based on regression techniques. The underlying assumption is that the model output functional can be well represented in a separated form, as a sum of elementary tensors in the stochastic tensor product space. The proposed method consists in constructing a tensor basis with a greedy algorithm and then in computing an approximation in the generated approximation space using regression with sparse regularization. Using appropriate regularization techniques, the regression problems are well posed for only few sample evaluations and they provide accurate approximations of model outputs
In this work we review a reduced basis method for the solution of uncertainty quantification problem...
Uncertainty quantification has been a topic of significant research in computational engineering sin...
This paper examines a completely non-intrusive, sample-based method for the computation of functiona...
This paper aims at handling high dimensional uncertainty propagation problems by proposing a tensor ...
Computational uncertainty quantication in a probabilistic setting is a special case of a parametric ...
Part 2: UQ TheoryInternational audienceComputational uncertainty quantification in a probabilistic s...
In this work we develop an adaptive and reduced computational algorithm based on dimension-adaptive ...
International audienceA tensor-based method is proposed for the solution of partial differential equa...
In this paper, we exploit the advantages of tensorial representations and propose several tensor lea...
International audienceWe propose a non-iterative robust numerical method for the non-intrusive uncer...
his paper examines a completely non-intrusive, sample-based method for the computation offunctional ...
Most of the discretization approaches for uncertain linear systems make use of the series representa...
The recent emergence of complex datasets in various disciplines presents a pressing need to devise r...
International audienceTensor approximation methods are receiving a growing attention for their use i...
The rising computational and memory demands of machine learning models, particularly in resource-con...
In this work we review a reduced basis method for the solution of uncertainty quantification problem...
Uncertainty quantification has been a topic of significant research in computational engineering sin...
This paper examines a completely non-intrusive, sample-based method for the computation of functiona...
This paper aims at handling high dimensional uncertainty propagation problems by proposing a tensor ...
Computational uncertainty quantication in a probabilistic setting is a special case of a parametric ...
Part 2: UQ TheoryInternational audienceComputational uncertainty quantification in a probabilistic s...
In this work we develop an adaptive and reduced computational algorithm based on dimension-adaptive ...
International audienceA tensor-based method is proposed for the solution of partial differential equa...
In this paper, we exploit the advantages of tensorial representations and propose several tensor lea...
International audienceWe propose a non-iterative robust numerical method for the non-intrusive uncer...
his paper examines a completely non-intrusive, sample-based method for the computation offunctional ...
Most of the discretization approaches for uncertain linear systems make use of the series representa...
The recent emergence of complex datasets in various disciplines presents a pressing need to devise r...
International audienceTensor approximation methods are receiving a growing attention for their use i...
The rising computational and memory demands of machine learning models, particularly in resource-con...
In this work we review a reduced basis method for the solution of uncertainty quantification problem...
Uncertainty quantification has been a topic of significant research in computational engineering sin...
This paper examines a completely non-intrusive, sample-based method for the computation of functiona...