The use of optimal transport (OT) distances, and in particular entropic-regularised OT distances, is an increasingly popular evaluation metric in many areas of machine learning and data science. Their use has largely been driven by the availability of efficient algorithms such as the Sinkhorn algorithm. One of the drawbacks of the Sinkhorn algorithm for large-scale data processing is that it is a two-phase method, where one first draws a large stream of data from the probability distributions, before applying the Sinkhorn algorithm to the discrete probability measures. More recently, there have been several works developing stochastic versions of Sinkhorn that directly handle continuous streams of data. In this work, we revisit the recently...
International audienceThe ability to compare two degenerate probability distributions (i.e. two prob...
Entropy regularized optimal transport (EOT) distance and its symmetric normalization, known as the S...
Optimal transport offers an alternative to maximum likelihood for learning generative autoencoding m...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
International audienceUnbalanced optimal transport (UOT) extends optimal transport (OT) to take into...
Comparing probability distributions is a fundamental problem in data sciences. Simple norms and dive...
International audienceOptimal transport (OT) defines a powerful framework to compare probability dis...
International audienceWe introduce in this paper a novel strategy for efficiently approximating the ...
The notion of entropy-regularized optimal transport, also known as Sinkhorn divergence, has recently...
We present several new complexity results for the entropic regularized algorithms that approximately...
International audienceOptimal transport (OT) and maximum mean discrepancies (MMD) are now routinely ...
Regularised optimal transport theory has been gaining increasing interest in machine learning as a v...
Entropy regularized optimal transport (EOT) distance and its symmetric normalization, known as the S...
Correctly estimating the discrepancy between two data distributions has always been an important tas...
International audienceThe ability to compare two degenerate probability distributions (i.e. two prob...
Entropy regularized optimal transport (EOT) distance and its symmetric normalization, known as the S...
Optimal transport offers an alternative to maximum likelihood for learning generative autoencoding m...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
This thesis proposes theoretical and numerical contributions to use Entropy-regularized Optimal Tran...
International audienceUnbalanced optimal transport (UOT) extends optimal transport (OT) to take into...
Comparing probability distributions is a fundamental problem in data sciences. Simple norms and dive...
International audienceOptimal transport (OT) defines a powerful framework to compare probability dis...
International audienceWe introduce in this paper a novel strategy for efficiently approximating the ...
The notion of entropy-regularized optimal transport, also known as Sinkhorn divergence, has recently...
We present several new complexity results for the entropic regularized algorithms that approximately...
International audienceOptimal transport (OT) and maximum mean discrepancies (MMD) are now routinely ...
Regularised optimal transport theory has been gaining increasing interest in machine learning as a v...
Entropy regularized optimal transport (EOT) distance and its symmetric normalization, known as the S...
Correctly estimating the discrepancy between two data distributions has always been an important tas...
International audienceThe ability to compare two degenerate probability distributions (i.e. two prob...
Entropy regularized optimal transport (EOT) distance and its symmetric normalization, known as the S...
Optimal transport offers an alternative to maximum likelihood for learning generative autoencoding m...