Geometry of Matrix Decompositions Seen Through Optimal Transport and Information Geometry
Klas Modin

TL;DR
This paper explores the geometric structures underlying matrix decompositions through optimal transport and information geometry, linking classical factorizations to Riemannian geometry and gradient flows.
Contribution
It provides a systematic geometric framework connecting matrix decompositions with optimal transport and information geometry, including new gradient flows and proofs.
Findings
Link between OMT and polar decomposition
New gradient flows for matrix factorizations
Geometric interpretation of isospectral flows
Abstract
The space of probability densities is an infinite-dimensional Riemannian manifold, with Riemannian metrics in two flavors: Wasserstein and Fisher--Rao. The former is pivotal in optimal mass transport (OMT), whereas the latter occurs in information geometry---the differential geometric approach to statistics. The Riemannian structures restrict to the submanifold of multivariate Gaussian distributions, where they induce Riemannian metrics on the space of covariance matrices. Here we give a systematic description of classical matrix decompositions (or factorizations) in terms of Riemannian geometry and compatible principal bundle structures. Both Wasserstein and Fisher--Rao geometries are discussed. The link to matrices is obtained by considering OMT and information geometry in the category of linear transformations and multivariate Gaussian distributions. This way, OMT is directly…
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