International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently introduced by the authors, has been presented: In addition to the initial data set given for performing the probabilistic learning, constraints are given, which correspond to statistics of experiments or of physical models. We consider a non-Gaussian random vector whose unknown probability distribution has to satisfy constraints. The method consists in constructing a generator using the PLoM and the classical Kullback-Leibler minimum cross-entropy principle. The resulting optimization problem is reformulated using Lagrange multipliers associated with the constraints. The optimal solution of the Lagrange multipliers is computed using an efficient i...
International audienceA methodology is proposed for the efficient solution of probabilistic nonconve...
Plenary LectureInternational audienceThis paper presents a challenging problem devoted to the probab...
Invited LectureInternational audienceWe consider a stochastic boundary value problem (SBVP) on a bou...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
International audienceThis paper presents novel mathematical results in support of the probabilistic...
International audienceA novel extension of the Probabilistic Learning on Manifolds (PLoM) is present...
International audienceThe probabilistic learning on manifolds (PLoM) introduced in 2016 has solved ...
International audienceIn Machine Learning (generally devoted to big-data case), the predictive learn...
Plenary LectureInternational audienceIn Machine Learning (generally devoted to big-data case), the p...
Plenary LectureInternational audienceThis paper presents a challenging problem devoted to the probab...
International audienceIn a recent paper, the authors proposed a general methodology for probabilisti...
The software "Probabilisting Learning on Manifolds (PLoM) with Partition" is a novel version of the ...
This PLoM (Probabilistic Learning on Manifolds) software is a novel version of the PLoM algorithm fo...
International audienceIn this presentation, we tackle the challenge of mitigating the high cost of a...
International audienceA methodology is proposed for the efficient solution of probabilistic nonconve...
Plenary LectureInternational audienceThis paper presents a challenging problem devoted to the probab...
Invited LectureInternational audienceWe consider a stochastic boundary value problem (SBVP) on a bou...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
International audienceThis paper presents novel mathematical results in support of the probabilistic...
International audienceA novel extension of the Probabilistic Learning on Manifolds (PLoM) is present...
International audienceThe probabilistic learning on manifolds (PLoM) introduced in 2016 has solved ...
International audienceIn Machine Learning (generally devoted to big-data case), the predictive learn...
Plenary LectureInternational audienceIn Machine Learning (generally devoted to big-data case), the p...
Plenary LectureInternational audienceThis paper presents a challenging problem devoted to the probab...
International audienceIn a recent paper, the authors proposed a general methodology for probabilisti...
The software "Probabilisting Learning on Manifolds (PLoM) with Partition" is a novel version of the ...
This PLoM (Probabilistic Learning on Manifolds) software is a novel version of the PLoM algorithm fo...
International audienceIn this presentation, we tackle the challenge of mitigating the high cost of a...
International audienceA methodology is proposed for the efficient solution of probabilistic nonconve...
Plenary LectureInternational audienceThis paper presents a challenging problem devoted to the probab...
Invited LectureInternational audienceWe consider a stochastic boundary value problem (SBVP) on a bou...