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Gromov-Wasserstein Learning for Graph Matching and Node Embedding

About

A novel Gromov-Wasserstein learning framework is proposed to jointly match (align) graphs and learn embedding vectors for the associated graph nodes. Using Gromov-Wasserstein discrepancy, we measure the dissimilarity between two graphs and find their correspondence, according to the learned optimal transport. The node embeddings associated with the two graphs are learned under the guidance of the optimal transport, the distance of which not only reflects the topological structure of each graph but also yields the correspondence across the graphs. These two learning steps are mutually-beneficial, and are unified here by minimizing the Gromov-Wasserstein discrepancy with structural regularizers. This framework leads to an optimization problem that is solved by a proximal point method. We apply the proposed method to matching problems in real-world networks, and demonstrate its superior performance compared to alternative approaches.

Hongteng Xu, Dixin Luo, Hongyuan Zha, Lawrence Carin• 2019

Related benchmarks

TaskDatasetResultRank
Graph AlignmentDouban
MRR5.81
45
Graph AlignmentSynthetic Erdos-Renyi graphs n=100
Loss0.0307
13
Graph AlignmentSynthetic Erdos-Renyi graphs n=500 (test)
Loss0.0452
13
Graph AlignmentSynthetic Erdos-Renyi graphs n=200 (test)
Loss0.11
13
Graph AlignmentSynthetic Erdos-Renyi graphs n=400
Loss0.0443
13
Graph AlignmentSynthetic Erdos-Renyi graphs (n=300)
Loss0.061
13
Subgraph AlignmentDouban Online-Offline
Hit@172.72
10
Subgraph AlignmentProteins 40% subgraph
Matching Accuracy24.31
10
Subgraph AlignmentEnzymes (30% subgraph)
Accuracy17.69
10
Subgraph AlignmentProteins subgraph and entire graph 1
Accuracy0.293
10
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