arXiv:2302.07989 [cs.LG]AbstractReferencesReviewsResources
From Graph Generation to Graph Classification
Published 2023-02-15Version 1
This note describes a new approach to classifying graphs that leverages graph generative models (GGM). Assuming a GGM that defines a joint probability distribution over graphs and their class labels, I derive classification formulas for the probability of a class label given a graph. A new conditional ELBO can be used to train a generative graph auto-encoder model for discrimination. While leveraging generative models for classification has been well explored for non-relational i.i.d. data, to our knowledge it is a novel approach to graph classification.
Comments: I welcome suggestions, comments, and proposals for collaboration to develop further the ideas in this paper. Please email oschulte@cs.sfu.ca. I am grateful to Renjie Liao for helpful comments
Subjects: I.2.6
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