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Geometric Evolution Graph Convolutional Networks: Enhancing Graph Representation Learning via Ricci Flow

About

We introduce the Geometric Evolution Graph Convolutional Network (GEGCN), a novel framework that enhances graph representation learning through explicit modeling of geometric evolution on graph structures. Specifically, GEGCN leverages a Long Short-Term Memory (LSTM) network to capture the dynamic structural sequence generated by discrete Ricci flow, and infuses the learned dynamic representations into a graph convolutional network. Extensive experiments demonstrate that GEGCN achieves excellent performance on classification tasks across various benchmark datasets, including homophilic/heterophilic graphs, filtered graphs, and large-scale graphs.

Jicheng Ma, Yunyan Yang, Juan Zhao, Liang Zhao• 2026

Related benchmarks

TaskDatasetResultRank
Node ClassificationCiteseer (test)
Accuracy0.766
945
Node ClassificationPubMed (test)
Accuracy87.4
586
Node ClassificationChameleon (test)
Mean Accuracy60.72
335
Node ClassificationCornell (test)
Mean Accuracy68.61
313
Node ClassificationTexas (test)
Mean Accuracy70.27
312
Node ClassificationActor (test)
Mean Accuracy0.3718
286
Node ClassificationWisconsin (test)
Mean Accuracy67.39
279
Node ClassificationCora (test)
Accuracy86.7
122
Node ClassificationCoauthor-CS (test)
Accuracy93.2
120
Node ClassificationAmazon Photo (test)
Accuracy94.1
112
Showing 10 of 10 rows

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