GeneralizationErrorBoundsforGraphEmbedding UsingNegativeSampling: LinearvsHyperbolic
–Neural Information Processing Systems
Inthis paper,we provide ageneralization error bound applicable for graph embedding both in linear and hyperbolic spaces under various negative sampling settings that appear in graph embedding.
Neural Information Processing Systems
Feb-18-2026, 21:55:07 GMT
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