Joint Subgraph-to-Subgraph Transitions -- Generalizing Triadic Closure for Powerful and Interpretable Graph Modeling

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Authors Justus Hibshman, Daniel Gonzalez Cedre, Satyaki Sikdar, Tim Weninger arXiv ID 2009.06770 Category cs.SI: Social & Info Networks Citations 6 Venue Web Search and Data Mining Last Checked 3 months ago
Abstract
We generalize triadic closure, along with previous generalizations of triadic closure, under an intuitive umbrella generalization: the Subgraph-to-Subgraph Transition (SST). We present algorithms and code to model graph evolution in terms of collections of these SSTs. We then use the SST framework to create link prediction models for both static and temporal, directed and undirected graphs which produce highly interpretable results. Quantitatively, our models match out-of-the-box performance of state of the art graph neural network models, thereby validating the correctness and meaningfulness of our interpretable results.
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