International audienceThe probabilistic learning on manifolds (PLoM) introduced in 2016 has solved difficult supervised problems for the ``small data'' limit where the number N of points in the training set is small. Many extensions have since been proposed, making it possible to deal with increasingly complex cases. However, the performance limit has been observed and explained for applications for which N is very small and for which the dimension of the diffusion-map basis is close to N. For these cases, we propose a novel extension based on the introduction of a partition in independent random vectors. We take advantage of this development to present improvements of the PLoM such as a simplified algorithm for constructing the diffusion...
PLoM és un algorisme disenyat per generar realitzacions d'un determinat conjunt de dades. També es ...
International audienceIn this presentation, we tackle the challenge of mitigating the high cost of a...
This thesis introduces geometric representations relevant to the analysis of datasets of random vect...
International audienceThis paper presents novel mathematical results in support of the probabilistic...
The software "Probabilisting Learning on Manifolds (PLoM) with Partition" is a novel version of the ...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
International audienceIn Machine Learning (generally devoted to big-data case), the predictive learn...
This PLoM (Probabilistic Learning on Manifolds) software is a novel version of the PLoM algorithm fo...
International audienceA novel extension of the Probabilistic Learning on Manifolds (PLoM) is present...
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...
International audienceWith the possibility of interpreting data using increasingly complex models, w...
International audienceWe address the problem of noise reduction for Ultra High By Pass Ratio (UHBR) ...
Learning in high-dim. space is hard and expensive. Good news: intrinsic dimensionality is often low....
In this paper, we develop a new classification method for manifold-valued data in the framework of p...
PLoM és un algorisme disenyat per generar realitzacions d'un determinat conjunt de dades. També es ...
International audienceIn this presentation, we tackle the challenge of mitigating the high cost of a...
This thesis introduces geometric representations relevant to the analysis of datasets of random vect...
International audienceThis paper presents novel mathematical results in support of the probabilistic...
The software "Probabilisting Learning on Manifolds (PLoM) with Partition" is a novel version of the ...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
International audienceIn Machine Learning (generally devoted to big-data case), the predictive learn...
This PLoM (Probabilistic Learning on Manifolds) software is a novel version of the PLoM algorithm fo...
International audienceA novel extension of the Probabilistic Learning on Manifolds (PLoM) is present...
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...
International audienceWith the possibility of interpreting data using increasingly complex models, w...
International audienceWe address the problem of noise reduction for Ultra High By Pass Ratio (UHBR) ...
Learning in high-dim. space is hard and expensive. Good news: intrinsic dimensionality is often low....
In this paper, we develop a new classification method for manifold-valued data in the framework of p...
PLoM és un algorisme disenyat per generar realitzacions d'un determinat conjunt de dades. També es ...
International audienceIn this presentation, we tackle the challenge of mitigating the high cost of a...
This thesis introduces geometric representations relevant to the analysis of datasets of random vect...