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Semi-relaxed Gromov-Wasserstein divergence with applications on graphs

About

Comparing structured objects such as graphs is a fundamental operation involved in many learning tasks. To this end, the Gromov-Wasserstein (GW) distance, based on Optimal Transport (OT), has proven to be successful in handling the specific nature of the associated objects. More specifically, through the nodes connectivity relations, GW operates on graphs, seen as probability measures over specific spaces. At the core of OT is the idea of conservation of mass, which imposes a coupling between all the nodes from the two considered graphs. We argue in this paper that this property can be detrimental for tasks such as graph dictionary or partition learning, and we relax it by proposing a new semi-relaxed Gromov-Wasserstein divergence. Aside from immediate computational benefits, we discuss its properties, and show that it can lead to an efficient graph dictionary learning algorithm. We empirically demonstrate its relevance for complex tasks on graphs such as partitioning, clustering and completion.

C\'edric Vincent-Cuaz, R\'emi Flamary, Marco Corneli, Titouan Vayer, Nicolas Courty• 2021

Related benchmarks

TaskDatasetResultRank
Subgraph AlignmentProteins (30% subgraph)
Accuracy22.75
10
Subgraph AlignmentEnzymes (30% subgraph)
Accuracy27.45
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Subgraph AlignmentSynthetic (20% subgraph)
Accuracy5.49
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Subgraph AlignmentProteins 20% subgraph
Accuracy (20% Subgraph)18.38
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Subgraph AlignmentEnzymes 20% subgraph
Accuracy23.13
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Subgraph AlignmentEnzymes 40% subgraph
Matching Accuracy27.02
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Subgraph AlignmentSynthetic 30% subgraph
Accuracy3.17
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Subgraph AlignmentProteins 40% subgraph
Matching Accuracy22.58
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Subgraph AlignmentProteins subgraph and entire graph 1
Accuracy0.213
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Subgraph AlignmentEnzymes 50% subgraph
Accuracy24.13
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