A Theory of Link Prediction via Relational Weisfeiler-Leman on Knowledge Graphs
–Neural Information Processing Systems
Graph neural networks are prominent models for representation learning over graph-structured data. While the capabilities and limitations of these models are well-understood for simple graphs, our understanding remains incomplete in the context of knowledge graphs. Our goal is to provide a systematic understanding of the landscape of graph neural networks for knowledge graphs pertaining to the prominent task of link prediction. Our analysis entails a unifying perspective on seemingly unrelated models and unlocks a series of other models. The expressive power of various models is characterized via a corresponding relational Weisfeiler-Leman algorithm.
Neural Information Processing Systems
Feb-7-2025, 00:45:39 GMT
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