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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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MixMOOD: A systematic approach to class distribution mismatch in semi-supervised learning using deep dataset dissimilarity measures.

TL;DR: It is argued that the MixMOOD approach can aid to standardize the evaluation of different semi-supervised learning techniques under real world scenarios involving out of distribution data.
Journal ArticleDOI

Computable complete invariants for finite clouds of unlabeled points under Euclidean isometry

Vitaliy Kurlin
- 18 Jul 2022 - 
TL;DR: The continuity under perturbations of points in the bottleneck distance is proved in terms of new metrics that are exactly computable in polynomial time in the number of points for a fixed dimension.
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Sketching and Clustering Metric Measure Spaces.

TL;DR: A duality between general classes of clustering and sketching problems is demonstrated, and it is proved that whereas the gap between these can be arbitrarily large, in the case of doubling metric spaces the resulting sketching objectives are polynomially related.
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On a Novel Application of Wasserstein-Procrustes for Unsupervised Cross-Lingual Learning.

TL;DR: This work devise an approach to solve Wasserstein-Procrustes in a direct way, which can be used to refine and to improve popular UCL methods such as iterative closest point (ICP), multilingual unsupervised and supervised embeddings (MUSE) and supervised Procruste methods.
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Gromov-Wasserstein Averaging in a Riemannian Framework

TL;DR: In this paper, a theoretical framework for performing statistical tasks on the space of (possibly asymmetric) matrices with arbitrary entries and sizes is introduced, carried out under the lens of the Gromov-Wasserstein (GW) distance, and their methods translate the Riemannian framework of GW distances developed by Sturm into practical, implementable tools for network data analysis.
References
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Journal ArticleDOI

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