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PDE-GCN: Novel Architectures for Graph Neural Networks Motivated by Partial Differential Equations

About

Graph neural networks are increasingly becoming the go-to approach in various fields such as computer vision, computational biology and chemistry, where data are naturally explained by graphs. However, unlike traditional convolutional neural networks, deep graph networks do not necessarily yield better performance than shallow graph networks. This behavior usually stems from the over-smoothing phenomenon. In this work, we propose a family of architectures to control this behavior by design. Our networks are motivated by numerical methods for solving Partial Differential Equations (PDEs) on manifolds, and as such, their behavior can be explained by similar analysis. Moreover, as we demonstrate using an extensive set of experiments, our PDE-motivated networks can generalize and be effective for various types of problems from different fields. Our architectures obtain better or on par with the current state-of-the-art results for problems that are typically approached using different architectures.

Moshe Eliasof, Eldad Haber, Eran Treister• 2021

Related benchmarks

TaskDatasetResultRank
Node ClassificationCora
Accuracy88.6
1215
Node ClassificationCiteseer
Accuracy78.48
931
Node ClassificationCora (test)
Mean Accuracy88.6
861
Node ClassificationCiteseer (test)
Accuracy0.7848
824
Node ClassificationPubmed
Accuracy89.93
819
Node ClassificationChameleon
Accuracy66.01
640
Node ClassificationWisconsin
Accuracy91.76
627
Node ClassificationTexas
Accuracy0.9324
616
Node ClassificationCornell
Accuracy89.73
582
Node ClassificationPubMed (test)
Accuracy89.93
546
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