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Journal ArticleDOI

Gromov–Wasserstein Distances and the Metric Approach to Object Matching

Facundo Mémoli
- 01 Aug 2011 - 
- Vol. 11, Iss: 4, pp 417-487
TLDR
This paper discusses certain modifications of the ideas concerning the Gromov–Hausdorff distance which have the goal of modeling and tackling the practical problems of object matching and comparison by proving explicit lower bounds for the proposed distance that involve many of the invariants previously reported by researchers.
Abstract
This paper discusses certain modifications of the ideas concerning the Gromov–Hausdorff distance which have the goal of modeling and tackling the practical problems of object matching and comparison. Objects are viewed as metric measure spaces, and based on ideas from mass transportation, a Gromov–Wasserstein type of distance between objects is defined. This reformulation yields a distance between objects which is more amenable to practical computations but retains all the desirable theoretical underpinnings. The theoretical properties of this new notion of distance are studied, and it is established that it provides a strict metric on the collection of isomorphism classes of metric measure spaces. Furthermore, the topology generated by this metric is studied, and sufficient conditions for the pre-compactness of families of metric measure spaces are identified. A second goal of this paper is to establish links to several other practical methods proposed in the literature for comparing/matching shapes in precise terms. This is done by proving explicit lower bounds for the proposed distance that involve many of the invariants previously reported by researchers. These lower bounds can be computed in polynomial time. The numerical implementations of the ideas are discussed and computational examples are presented.

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Citations
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Journal ArticleDOI

Hausdorff and Wasserstein metrics on graphs and other structured data

TL;DR: In this paper, the authors extend the Wasserstein metric and other elements of optimal transport from matching of sets to the matching of graphs and other structured data, which relaxes the usual notion of homomorphism between structures.
Posted Content

Efficient estimation of a Gromov-Hausdorff distance between unweighted graphs.

TL;DR: This paper proposes a polynomial algorithm for estimating the so-called modified Gromov--Hausdorff (mGH) distance, whose topological equivalence with the standard Gromovsky-Hausdorf distance was established in 2012, and implements the algorithm for the case of compact metric spaces induced by unweighted graphs as part of Python library.
Journal ArticleDOI

Robust Attributed Graph Alignment via Joint Structure Learning and Optimal Transport

TL;DR: SLOTAlign as mentioned in this paper proposes an unsupervised graph alignment framework that jointly performs structure learning and optimal transport alignment without the requirement of cross-graph comparison, which reduces the effect of structure and feature inconsistency inherited across graphs.
Journal Article

Entropic Optimal Transport in Random Graphs

N. Keriven
- 11 Jan 2022 - 
TL;DR: This paper shows that it is possible to consistently estimate entropic-regularized Optimal Transport (OT) distances between groups of nodes in the latent space, and provides a general stability result forEntropic OT with respect to perturbations of the cost matrix.
Proceedings ArticleDOI

Variational Resampling Based Assessment of Deep Neural Networks under Distribution Shift

TL;DR: A novel variational inference based resampling framework is proposed to evaluate the robustness and generalization capability of deep learning models with respect to distribution shift and is used to establish novel model selection criteria and assessment tools in machine learning.
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