Recent Advances in Optimal Transport for Machine Learning

Recently, Optimal Transport has been proposed as a probabilistic framework in Machine Learning for comparing and manipulating probability distributions. This is rooted in its rich history and theory, and has offered new solutions to different problems in machine learning, such as generative modeling and transfer learning. In this survey we explore contributions of Optimal Transport for Machine Learning over the period 2012 – 2022, focusing on four sub-fields of Machine Learning: supervised, unsupervised, transfer and reinforcement learning. We further highlight the recent development in computational Optimal Transport, and its interplay with Machine Learning practice.

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research
02/17/2021

A Consistent Extension of Discrete Optimal Transport Maps for Machine Learning Applications

Optimal transport maps define a one-to-one correspondence between probab...
research
05/29/2019

Entropic Regularisation of Robust Optimal Transport

Grogan et al [11,12] have recently proposed a solution to colour transfe...
research
08/19/2020

Linearized Optimal Transport for Collider Events

We introduce an efficient framework for computing the distance between c...
research
09/14/2018

Entropic optimal transport is maximum-likelihood deconvolution

We give a statistical interpretation of entropic optimal transport by sh...
research
10/01/2021

Factored couplings in multi-marginal optimal transport via difference of convex programming

Optimal transport (OT) theory underlies many emerging machine learning (...
research
03/02/2022

Combining Reinforcement Learning and Optimal Transport for the Traveling Salesman Problem

The traveling salesman problem is a fundamental combinatorial optimizati...
research
03/01/2018

Computational Optimal Transport

Optimal Transport (OT) is a mathematical gem at the interface between pr...

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