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The Z-Gromov-Wasserstein Distance

Abstract

The Gromov-Wasserstein (GW) distance is a powerful tool for comparing metric measure spaces which has found broad applications in data science and machine learning. Driven by the need to analyze datasets whose objects have increasingly complex structure (such as node and edge-attributed graphs), several variants of GW distance have been introduced in the recent literature. With a view toward establishing a general framework for the theory of GW-like distances, this paper considers a vast generalization of the notion of a metric measure space: for an arbitrary metric space ZZ, we define a ZZ-network to be a measure space endowed with a kernel valued in ZZ. We introduce a method for comparing ZZ-networks by defining a generalization of GW distance, which we refer to as ZZ-Gromov-Wasserstein (ZZ-GW) distance. This construction subsumes many previously known metrics and offers a unified approach to understanding their shared properties. This paper demonstrates that the ZZ-GW distance defines a metric on the space of ZZ-networks which retains desirable properties of ZZ, such as separability, completeness, and geodesicity. Many of these properties were unknown for existing variants of GW distance that fall under our framework. Our focus is on foundational theory, but our results also include computable lower bounds and approximations of the distance which will be useful for practical applications.

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