AlignGraph: A Group of Generative Models for Graphs
SDM (SDM), 2023
Main:7 Pages
2 Figures
Bibliography:2 Pages
5 Tables
Appendix:3 Pages
Abstract
It is challenging for generative models to learn a distribution over graphs because of the lack of permutation invariance: nodes may be ordered arbitrarily across graphs, and standard graph alignment is combinatorial and notoriously expensive. We propose AlignGraph, a group of generative models that combine fast and efficient graph alignment methods with a family of deep generative models that are invariant to node permutations. Our experiments demonstrate that our framework successfully learns graph distributions, outperforming competitors by 25% -560% in relevant performance scores.
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