Gromov-Wasserstein Averaging in a Riemannian Framework

10/10/2019
by   Samir Chowdhury, et al.
0

We introduce a theoretical framework for performing statistical tasks—including, but not limited to, averaging and principal component analysis—on the space of (possibly asymmetric) matrices with arbitrary entries and sizes. This is carried out under the lens of the Gromov-Wasserstein (GW) distance, and our methods translate the Riemannian framework of GW distances developed by Sturm into practical, implementable tools for network data analysis. Our methods are illustrated on datasets of asymmetric stochastic blockmodel networks and planar shapes viewed as metric spaces. On the theoretical front, we supplement the work of Sturm by producing additional results on the tangent structure of this "space of spaces", as well as on the gradient flow of the Fréchet functional on this space.

READ FULL TEXT
research
12/05/2018

Intrinsic Riemannian Functional Data Analysis

In this work we develop a novel and foundational framework for analyzing...
research
03/16/2018

Natural gradient via optimal transport I

We study a natural Wasserstein gradient flow on manifolds of probability...
research
05/31/2021

Intrinsic Wasserstein Correlation Analysis

We develop a framework of canonical correlation analysis for distributio...
research
04/05/2023

Wasserstein Principal Component Analysis for Circular Measures

We consider the 2-Wasserstein space of probability measures supported on...
research
02/21/2019

Manifold valued data analysis of samples of networks, with applications in corpus linguistics

Networks can be used in many applications, such as in the analysis of te...
research
01/22/2021

Projected Statistical Methods for Distributional Data on the Real Line with the Wasserstein Metric

We present a novel class of projected methods, to perform statistical an...
research
12/15/2021

On Generalization and Computation of Tukey's Depth: Part II

This paper studies how to generalize Tukey's depth to problems defined i...

Please sign up or login with your details

Forgot password? Click here to reset