This paper aims at building the theoretical foundations for manifold learning algorithms in the space of absolutely continuous probability measures on a compact and convex subset of $\mathbb{R}^d$, metrized with the Wasserstein-2 distance $W$. We begin by introducing a natural construction of submanifolds $\Lambda$ of probability measures equipped with metric $W_\Lambda$, the geodesic restriction of $W$ to $\Lambda$. In contrast to other constructions, these submanifolds are not necessarily flat, but still allow for local linearizations in a similar fashion to Riemannian submanifolds of $\mathbb{R}^d$. We then show how the latent manifold structure of $(\Lambda,W_{\Lambda})$ can be learned from samples $\{\lambda_i\}_{i=1}^N$ of $\Lambda$ a...
Over the past few years, optimal transport has gained popularity in machine learning as a way to com...
The Wasserstein distance is an attractive tool for data analysis but statistical inference is hinder...
The celebrated Lott-Sturm-Villani theory of metric measure spaces furnishes synthetic notions of a R...
The main object of interest in this thesis is P(M) – the space of probability measures on a manifold...
peer reviewedWe generalize an equation introduced by Benamou and Brenier and characterizing Wasserst...
Projecting the distance measures onto a low-dimensional space is an efficient way of mitigating the ...
We prove a general criterion for the density in energy of suitable subalgebras of Lipschitz function...
We develop the theory of a metric, which we call the $\nu$-based Wasserstein metric and denote by $W...
We develop the theory of a metric, which we call the $\nu$-based Wasserstein metric and denote by $W...
The overarching theme of this thesis is the study of Stein's method on manifolds. We detail an adapt...
Wasserstein distances or, more generally, distances that quantify the optimal transport between prob...
We prove a general criterion for the density in energy of suitable subalgebras of Lipschitz function...
The paper proves transportation inequalities for probability measures on spheres for the Wasserstein...
This paper is concerned by statistical inference problems from a data set whose elements may be mode...
In this article, exponential contraction in Wasserstein distance for heat semigroups of diffusion pr...
Over the past few years, optimal transport has gained popularity in machine learning as a way to com...
The Wasserstein distance is an attractive tool for data analysis but statistical inference is hinder...
The celebrated Lott-Sturm-Villani theory of metric measure spaces furnishes synthetic notions of a R...
The main object of interest in this thesis is P(M) – the space of probability measures on a manifold...
peer reviewedWe generalize an equation introduced by Benamou and Brenier and characterizing Wasserst...
Projecting the distance measures onto a low-dimensional space is an efficient way of mitigating the ...
We prove a general criterion for the density in energy of suitable subalgebras of Lipschitz function...
We develop the theory of a metric, which we call the $\nu$-based Wasserstein metric and denote by $W...
We develop the theory of a metric, which we call the $\nu$-based Wasserstein metric and denote by $W...
The overarching theme of this thesis is the study of Stein's method on manifolds. We detail an adapt...
Wasserstein distances or, more generally, distances that quantify the optimal transport between prob...
We prove a general criterion for the density in energy of suitable subalgebras of Lipschitz function...
The paper proves transportation inequalities for probability measures on spheres for the Wasserstein...
This paper is concerned by statistical inference problems from a data set whose elements may be mode...
In this article, exponential contraction in Wasserstein distance for heat semigroups of diffusion pr...
Over the past few years, optimal transport has gained popularity in machine learning as a way to com...
The Wasserstein distance is an attractive tool for data analysis but statistical inference is hinder...
The celebrated Lott-Sturm-Villani theory of metric measure spaces furnishes synthetic notions of a R...