Explainability in subgraphs-enhanced Graph Neural Networks
Abstract
Recently, subgraphs-enhanced Graph Neural Networks (SGNNs) have been introduced to enhance
the expressive power of Graph Neural Networks
(GNNs), which was proved to be not higher than
the 1-dimensional Weisfeiler-Leman isomorphism
test. The new paradigm suggests using subgraphs
extracted from the input graph to improve the
model’s expressiveness, but the additional complexity exacerbates an already challenging problem in
GNNs: explaining their predictions. In this work,
we adapt PGExplainer, one of the most recent explainers for GNNs, to SGNNs. The proposed explainer accounts for the contribution of all the different subgraphs and can produce a meaningful explanation that humans can interpret. The experiments that we performed both on real and synthetic datasets show that our framework is successful in explaining the decision process of an SGNN
on graph classification tasks.
Citation
Guerra M, Bianchi FM, Scardapane S, Spinelli. Explainability in subgraphs-enhanced Graph Neural Networks. Proceedings of the Northern Lights Deep Learning Workshop. 2023Metadata
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