Improving Your Graph Neural Networks: A High-Frequency Booster | IEEE Conference Publication | IEEE Xplore

Improving Your Graph Neural Networks: A High-Frequency Booster


Abstract:

Graph neural networks (GNNs) hold the promise of learning efficient representations of graph-structured data, and one of its most important applications is semi-supervise...Show More

Abstract:

Graph neural networks (GNNs) hold the promise of learning efficient representations of graph-structured data, and one of its most important applications is semi-supervised node classification. However, in this application, GNN frameworks tend to fail due to the following issues: over-smoothing and heterophily. The most popular GNNs are known to be focused on the message- passing framework, and recent research shows that these G NN s are often bounded by low-pass filters from a signal processing perspective. We thus incorporate high-frequency information into GNNs to alleviate this genetic problem. In this paper, we argue that the complement of the original graph incorporates a high- pass filter and propose Complement Laplacian Regularization (CLAR) for an efficient enhancement of high-frequency compo- nents. The experimental results demonstrate that CLAR helps G NN s tackle over-smoothing, improving the expressiveness of heterophilic graphs, which adds up to 3.6% improvement over popular baselines and ensures topological robustness.
Date of Conference: 28 November 2022 - 01 December 2022
Date Added to IEEE Xplore: 08 February 2023
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Conference Location: Orlando, FL, USA

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