International audience
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December 8, 2019 (v1)Conference paperUploaded on: December 4, 2022
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June 9, 2019 (v1)Conference paper
This work considers the problem of computing distances between structured objects such as undirected graphs, seen as probability distributions in a specific metric space. We consider a new transportation distance (i.e. that minimizes a total cost of transporting probability masses) that unveils the geometric nature of the structured objects...
Uploaded on: December 4, 2022 -
July 5, 2019 (v1)Publication
Optimal transport theory has recently found many applications in machine learning thanks to its capacity for comparing various machine learning objects considered as distributions. The Kantorovitch formulation, leading to the Wasserstein distance, focuses on the features of the elements of the objects but treat them independently, whereas the...
Uploaded on: December 4, 2022 -
September 2020 (v1)Journal article
Optimal transport theory has recently found many applications in machine learning thanks to its capacity to meaningfully compare various machine learning objects that are viewed as distributions. The Kantorovitch formulation, leading to the Wasserstein distance, focuses on the features of the elements of the objects, but treats them...
Uploaded on: December 4, 2022 -
April 1, 2021 (v1)Journal article
Optimal transport has recently been reintroduced to the machine learning community thanks in part to novel efficient optimization procedures allowing for medium to large scale applications. We propose a Python toolbox that implements several key optimal transport ideas for the machine learning community. The toolbox contains implementations of...
Uploaded on: December 4, 2022