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Modelling sparsity, heterogeneity, reciprocity and community structure in temporal interaction data

Xenia Miscouridou, Francois Caron, Yee Whye Teh

Nov-20-2025, 14:38:30 GMT–Neural Information Processing Systems 

We propose a novel class of network models for temporal dyadic interaction data.

  artificial intelligence, interaction, machine learning, (18 more...)

Neural Information Processing Systems

Nov-20-2025, 14:38:30 GMT

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