2022
DOI: 10.48550/arxiv.2202.03884
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GraphDCA -- a Framework for Node Distribution Comparison in Real and Synthetic Graphs

Abstract: We argue that when comparing two graphs, the distribution of node structural features is more informative than global graph statistics which are often used in practice, especially to evaluate graph generative models. Thus, we present GraphDCA -a framework for evaluating similarity between graphs based on the alignment of their respective node representation sets. The sets are compared using a recently proposed method for comparing representation spaces, called Delaunay Component Analysis (DCA), which we extend… Show more

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