The matching principles behind optimal transport (OT) play an increasingly important role in machine learning, a trend which can be observed when OT is used to disambiguate datasets in applications (e.g. single-cell genomics) or used to improve more complex methods (e.g. balanced attention in transformers or self-supervised learning). To scale to more challenging problems, there is a growing consensus that OT requires solvers that can operate on millions, not thousands, of points. The low-rank optimal transport (LOT) approach advocated in \cite{scetbon2021lowrank} holds several promises in that regard, and was shown to complement more established entropic regularization approaches, being able to insert itself in more complex pipelines, such...
The objective in statistical Optimal Transport (OT) is to consistently estimate the optimal transpor...
Generalizing knowledge beyond source domains is a crucial prerequisite for many biomedical applicati...
International audienceWe propose a method based on optimal transport for empirical distributions wit...
Neurips 2021 Optimal Transport and Machine Learning WorkshopOptimal transport distances (OT) have be...
International audienceOptimal transport distances have found many applications in machine learning f...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
We propose a new method to estimate Wasserstein distances and optimal transport plans between two pr...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
Deep learning models are artificial neural networks and they have arisen as the current most competi...
In this paper, we address the problem of estimating transport surplus (a.k.a. matching affinity) in ...
International audienceOptimal transport (OT) defines a powerful framework to compare probability dis...
Motivated by robust dynamic resource allocation in operations research, we study the \textit{Online ...
Optimal transport (OT) formalizes the problem of finding an optimal coupling between probability mea...
Regularised optimal transport theory has been gaining increasing interest in machine learning as a v...
The objective in statistical Optimal Transport (OT) is to consistently estimate the optimal transpor...
Generalizing knowledge beyond source domains is a crucial prerequisite for many biomedical applicati...
International audienceWe propose a method based on optimal transport for empirical distributions wit...
Neurips 2021 Optimal Transport and Machine Learning WorkshopOptimal transport distances (OT) have be...
International audienceOptimal transport distances have found many applications in machine learning f...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
We propose a new method to estimate Wasserstein distances and optimal transport plans between two pr...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
Deep learning models are artificial neural networks and they have arisen as the current most competi...
In this paper, we address the problem of estimating transport surplus (a.k.a. matching affinity) in ...
International audienceOptimal transport (OT) defines a powerful framework to compare probability dis...
Motivated by robust dynamic resource allocation in operations research, we study the \textit{Online ...
Optimal transport (OT) formalizes the problem of finding an optimal coupling between probability mea...
Regularised optimal transport theory has been gaining increasing interest in machine learning as a v...
The objective in statistical Optimal Transport (OT) is to consistently estimate the optimal transpor...
Generalizing knowledge beyond source domains is a crucial prerequisite for many biomedical applicati...
International audienceWe propose a method based on optimal transport for empirical distributions wit...