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5 months ago

Beyond Low-frequency Information in Graph Convolutional Networks

Deyu Bo; Xiao Wang; Chuan Shi; Huawei Shen

Beyond Low-frequency Information in Graph Convolutional Networks

Abstract

Graph neural networks (GNNs) have been proven to be effective in various network-related tasks. Most existing GNNs usually exploit the low-frequency signals of node features, which gives rise to one fundamental question: is the low-frequency information all we need in the real world applications? In this paper, we first present an experimental investigation assessing the roles of low-frequency and high-frequency signals, where the results clearly show that exploring low-frequency signal only is distant from learning an effective node representation in different scenarios. How can we adaptively learn more information beyond low-frequency information in GNNs? A well-informed answer can help GNNs enhance the adaptability. We tackle this challenge and propose a novel Frequency Adaptation Graph Convolutional Networks (FAGCN) with a self-gating mechanism, which can adaptively integrate different signals in the process of message passing. For a deeper understanding, we theoretically analyze the roles of low-frequency signals and high-frequency signals on learning node representations, which further explains why FAGCN can perform well on different types of networks. Extensive experiments on six real-world networks validate that FAGCN not only alleviates the over-smoothing problem, but also has advantages over the state-of-the-arts.

Code Repositories

bdy9527/FAGCN
Official
pytorch

Benchmarks

BenchmarkMethodologyMetrics
node-classification-on-actorFAGCN
Accuracy: 34.82 ± 1.35
node-classification-on-chameleonFAGCN
Accuracy: 46.07 ± 2.11
node-classification-on-chameleon-60-20-20FAGCN
1:1 Accuracy: 49.47 ± 2.84
node-classification-on-citeseer-48-32-20FAGCN
1:1 Accuracy: 77.07 ± 2.05
node-classification-on-citeseer-60-20-20FAGCN
1:1 Accuracy: 82.37 ± 1.46
node-classification-on-citeseer-60-20-20H2GCN
1:1 Accuracy: 79.97 ± 0.69
node-classification-on-cora-48-32-20-fixedFAGCN
1:1 Accuracy: 88.05 ± 1.57
node-classification-on-cora-60-20-20-randomFAGCN
1:1 Accuracy: 88.85 ± 1.36
node-classification-on-cornellFAGCN
Accuracy: 76.76 ± 5.87
node-classification-on-cornell-60-20-20FAGCN
1:1 Accuracy: 88.03 ± 5.6
node-classification-on-film-60-20-20-randomFAGCN
1:1 Accuracy: 31.59 ± 1.37
node-classification-on-film-60-20-20-randomH2GCN
1:1 Accuracy: 38.85 ± 1.17
node-classification-on-non-homophilicFAGCN
1:1 Accuracy: 88.03 ± 5.6
node-classification-on-non-homophilic-1FAGCN
1:1 Accuracy: 89.75 ± 6.37
node-classification-on-non-homophilic-10FAGCN
1:1 Accuracy: 34.82 ± 1.35
node-classification-on-non-homophilic-11FAGCN
1:1 Accuracy: 46.07 ± 2.11
node-classification-on-non-homophilic-12FAGCN
1:1 Accuracy: 30.83 ± 0.69
node-classification-on-non-homophilic-2FAGCN
1:1 Accuracy: 88.85 ± 4.39
node-classification-on-non-homophilic-4FAGCN
1:1 Accuracy: 49.47 ± 2.84
node-classification-on-non-homophilic-6FAGCN
1:1 Accuracy: 66.86±0.53
node-classification-on-non-homophilic-7FAGCN
1:1 Accuracy: 76.76 ± 5.87
node-classification-on-non-homophilic-8FAGCN
1:1 Accuracy: 79.61 ± 1.58
node-classification-on-non-homophilic-9H2GCN
1:1 Accuracy: 84.86 ± 7.23
node-classification-on-non-homophilic-9FAGCN
1:1 Accuracy: 76.49 ± 2.87
node-classification-on-pubmed-48-32-20-fixedFAGCN
1:1 Accuracy: 88.09 ± 1.38
node-classification-on-pubmed-60-20-20-randomFAGCN
1:1 Accuracy: 89.98 ± 0.54
node-classification-on-squirrelFAGCN
Accuracy: 30.83 ± 0.69
node-classification-on-squirrel-60-20-20FAGCN
1:1 Accuracy: 42.24 ± 1.2
node-classification-on-texasFAGCN
Accuracy: 76.49 ± 2.87
node-classification-on-texas-60-20-20-randomFAGCN
1:1 Accuracy: 88.85 ± 4.39
node-classification-on-wisconsinFAGCN
Accuracy: 79.61 ± 1.58
node-classification-on-wisconsinWRGAT
Accuracy: 86.98 ± 3.78
node-classification-on-wisconsin-60-20-20FAGCN
1:1 Accuracy: 89.75 ± 6.37

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Beyond Low-frequency Information in Graph Convolutional Networks | Papers | HyperAI