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Fused Gromov-Wasserstein distance for structured objects: theoretical foundations and mathematical properties

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Optimal transport theory has recently found many applications in machine learning thanks to its capacity for comparing various machine learning objects considered as distributions. The Kantorovitch formulation, leading to the Wasserstein distance, focuses on the features of the elements of the objects but treat them independently, whereas the Gromov-Wasserstein distance focuses only on the relations between the elements, depicting the structure of the object, yet discarding its features. In this paper we propose to extend these distances in order to encode simultaneously both the feature and structure informations, resulting in the Fused Gromov-Wasserstein distance. We develop the mathematical framework for this novel distance, prove its metric and interpolation properties and provide a concentration result for the convergence of finite samples. We also illustrate and interpret its use in various contexts where structured objects are involved.

Titouan Vayer, Laetita Chapel, R\'emi Flamary, Romain Tavenard, Nicolas Courty• 2018

Related benchmarks

TaskDatasetResultRank
Graph ClassificationENZYMES
Accuracy72.17
305
Graph ClassificationIMDB-B (10-fold cross-validation)
Accuracy70.8
148
Graph ClassificationIMDB-M (10-fold cross-validation)
Accuracy48.89
84
Graph ClassificationPROTEIN
Accuracy74.34
48
Graph ClassificationCOX2
Accuracy77.02
40
Graph ClassificationBZR
Accuracy85.61
29
Graph ClassificationMUTAG discrete attributes (10-fold nested-cross val)
Accuracy84.42
13
Graph ClassificationPTC-MR discrete attributes (10-fold nested-cross val)
Accuracy56.17
13
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