Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Graph Neural Reaction Diffusion Models

About

The integration of Graph Neural Networks (GNNs) and Neural Ordinary and Partial Differential Equations has been extensively studied in recent years. GNN architectures powered by neural differential equations allow us to reason about their behavior, and develop GNNs with desired properties such as controlled smoothing or energy conservation. In this paper we take inspiration from Turing instabilities in a Reaction Diffusion (RD) system of partial differential equations, and propose a novel family of GNNs based on neural RD systems. We \textcolor{black}{demonstrate} that our RDGNN is powerful for the modeling of various data types, from homophilic, to heterophilic, and spatio-temporal datasets. We discuss the theoretical properties of our RDGNN, its implementation, and show that it improves or offers competitive performance to state-of-the-art methods.

Moshe Eliasof, Eldad Haber, Eran Treister• 2024

Related benchmarks

TaskDatasetResultRank
Node ClassificationCiteseer (test)
Accuracy0.7834
729
Node ClassificationCora (test)
Mean Accuracy89.91
687
Node ClassificationChameleon
Accuracy74.79
549
Node ClassificationPubMed (test)
Accuracy90.37
500
Node ClassificationSquirrel
Accuracy65.96
500
Node ClassificationCornell
Accuracy92.72
426
Node ClassificationWisconsin
Accuracy93.72
410
Node ClassificationTexas
Accuracy0.9459
410
Node ClassificationFilm
Accuracy38.69
127
Node ClassificationarXiv-year (test)
Accuracy58.46
88
Showing 10 of 16 rows

Other info

Follow for update