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Depth-Adaptive Graph Neural Networks via Learnable Bakry-'Emery Curvature

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Graph Neural Networks (GNNs) have demonstrated strong representation learning capabilities for graph-based tasks. Recent advances on GNNs leverage geometric properties, such as curvature, to enhance its representation capabilities by modeling complex connectivity patterns and information flow within graphs. However, most existing approaches focus solely on discrete graph topology, overlooking diffusion dynamics and task-specific dependencies essential for effective learning. To address this, we propose integrating Bakry-\'Emery curvature, which captures both structural and task-driven aspects of information propagation. We develop an efficient, learnable approximation strategy, making curvature computation scalable for large graphs. Furthermore, we introduce an adaptive depth mechanism that dynamically adjusts message-passing layers per vertex based on its curvature, ensuring efficient propagation. Our theoretical analysis establishes a link between curvature and feature distinctiveness, showing that high-curvature vertices require fewer layers, while low-curvature ones benefit from deeper propagation. Extensive experiments on benchmark datasets validate the effectiveness of our approach, showing consistent performance improvements across diverse graph learning tasks.

Asela Hevapathige, Ahad N. Zehmakan, Qing Wang• 2025

Related benchmarks

TaskDatasetResultRank
Graph ClassificationPROTEINS
Accuracy79.1
1252
Graph ClassificationMUTAG
Accuracy96.1
1103
Node ClassificationCiteseer
Accuracy78.14
1037
Node ClassificationPubmed
Accuracy87
865
Node ClassificationWisconsin
Accuracy66.25
864
Node ClassificationCornell
Accuracy65.96
851
Node ClassificationTexas
Accuracy0.6885
801
Node ClassificationActor
Accuracy34.34
556
Graph ClassificationPTC-MR
Accuracy72.9
244
Graph ClassificationBZR
Accuracy92.4
165
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