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Node Feature Kernels Increase Graph Convolutional Network Robustness

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Résumé

The robustness of the much used Graph Convolutional Networks (GCNs) to perturbations of their input is becoming a topic of increasing importance. In this paper the random GCN is introduced for which a random matrix theory analysis is possible. This analysis suggests that if the graph is sufficiently perturbed, or in the extreme case random, then the GCN fails to benefit from the node features. It is furthermore observed that enhancing the message passing step in GCNs by adding the node feature kernel to the adjacency matrix of the graph structure solves this problem. An empirical study of a GCN utilised for node classification on six real datasets further confirms the theoretical findings and demonstrates that perturbations of the graph structure can result in GCNs performing significantly worse than MultiLayer Perceptrons run on the node features alone. In practice, adding a node feature kernel to the message passing of perturbed graphs results in a significant improvement of the GCN's performance, thereby rendering it more robust to graph perturbations. Our code is publicly available at: https://github.com/ChangminWu/RobustGCN.

langue originaleAnglais
Pages (de - à)6225-6241
Nombre de pages17
journalProceedings of Machine Learning Research
Volume151
étatPublié - 1 janv. 2022
Evénement25th International Conference on Artificial Intelligence and Statistics, AISTATS 2022 - Virtual, Online, Espagne
Durée: 28 mars 202230 mars 2022

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