Wasserstein Dictionary Learning: Optimal Transport-based unsupervised non-linear dictionary learning

08/07/2017
by   Morgan A. Schmitz, et al.
0

This article introduces a new non-linear dictionary learning method for histograms in the probability simplex. The method leverages optimal transport theory, in the sense that our aim is to reconstruct histograms using so called displacement interpolations (a.k.a. Wasserstein barycenters) between dictionary atoms; such atoms are themselves synthetic histograms in the probability simplex. Our method simultaneously estimates such atoms, and, for each datapoint, the vector of weights that can optimally reconstruct it as an optimal transport barycenter of such atoms. Our method is computationally tractable thanks to the addition of an entropic regularization to the usual optimal transportation problem, leading to an approximation scheme that is efficient, parallel and simple to differentiate. Both atoms and weights are learned using a gradient-based descent method. Gradients are obtained by automatic differentiation of the generalized Sinkhorn iterations that yield barycenters with entropic smoothing. Because of its formulation relying on Wasserstein barycenters instead of the usual matrix product between dictionary and codes, our method allows for non-linear relationships between atoms and the reconstruction of input data. We illustrate its application in several different image processing settings.

READ FULL TEXT

page 20

page 22

page 24

page 25

page 26

page 35

page 36

page 37

research
07/27/2023

Multi-Source Domain Adaptation through Dataset Dictionary Learning in Wasserstein Space

This paper seeks to solve Multi-Source Domain Adaptation (MSDA), which a...
research
01/03/2022

Transport type metrics on the space of probability measures involving singular base measures

We develop the theory of a metric, which we call the ν-based Wasserstein...
research
10/04/2022

Multi-marginal Approximation of the Linear Gromov-Wasserstein Distance

Recently, two concepts from optimal transport theory have successfully b...
research
06/07/2019

Optimal Transport Relaxations with Application to Wasserstein GANs

We propose a family of relaxations of the optimal transport problem whic...
research
09/21/2022

Quantitative Stability of Barycenters in the Wasserstein Space

Wasserstein barycenters define averages of probability measures in a geo...
research
10/06/2021

Semi-relaxed Gromov Wasserstein divergence with applications on graphs

Comparing structured objects such as graphs is a fundamental operation i...
research
08/15/2019

Using Wasserstein-2 regularization to ensure fair decisions with Neural-Network classifiers

In this paper, we propose a new method to build fair Neural-Network clas...

Please sign up or login with your details

Forgot password? Click here to reset