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A Theoretical Comparison of Graph Neural Network Extensions

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We study and compare different Graph Neural Network extensions that increase the expressive power of GNNs beyond the Weisfeiler-Leman test. We focus on (i) GNNs based on higher order WL methods, (ii) GNNs that preprocess small substructures in the graph, (iii) GNNs that preprocess the graph up to a small radius, and (iv) GNNs that slightly perturb the graph to compute an embedding. We begin by presenting a simple improvement for this last extension that strictly increases the expressive power of this GNN variant. Then, as our main result, we compare the expressiveness of these extensions to each other through a series of example constructions that can be distinguished by one of the extensions, but not by another one. We also show negative examples that are particularly challenging for each of the extensions, and we prove several claims about the ability of these extensions to count cliques and cycles in the graph.

P\'al Andr\'as Papp, Roger Wattenhofer• 2022

Related benchmarks

TaskDatasetResultRank
Graph Expressivity EvaluationBREC Regular
Number138
20
Graph ExpressivityBREC v1 (Total)
Number298
15
Graph ExpressivityBREC Basic Graphs v1
Number60
15
Graph ExpressivityBREC Extension Graphs v1
Number100
15
Graph ExpressivityBREC CFI Graphs v1
Number0.00e+0
15
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