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5 months ago

Beyond Homophily in Graph Neural Networks: Current Limitations and Effective Designs

Jiong Zhu; Yujun Yan; Lingxiao Zhao; Mark Heimann; Leman Akoglu; Danai Koutra

Beyond Homophily in Graph Neural Networks: Current Limitations and Effective Designs

Abstract

We investigate the representation power of graph neural networks in the semi-supervised node classification task under heterophily or low homophily, i.e., in networks where connected nodes may have different class labels and dissimilar features. Many popular GNNs fail to generalize to this setting, and are even outperformed by models that ignore the graph structure (e.g., multilayer perceptrons). Motivated by this limitation, we identify a set of key designs -- ego- and neighbor-embedding separation, higher-order neighborhoods, and combination of intermediate representations -- that boost learning from the graph structure under heterophily. We combine them into a graph neural network, H2GCN, which we use as the base method to empirically evaluate the effectiveness of the identified designs. Going beyond the traditional benchmarks with strong homophily, our empirical analysis shows that the identified designs increase the accuracy of GNNs by up to 40% and 27% over models without them on synthetic and real networks with heterophily, respectively, and yield competitive performance under homophily.

Code Repositories

GemsLab/H2GCN
Official
tf
Mentioned in GitHub
kdd-submitter/on_local_aggregation
pytorch
Mentioned in GitHub
GitEventhandler/H2GCN-PyTorch
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
node-classification-on-actorH2GCN-2
Accuracy: 34.49 ± 1.63
node-classification-on-actorH2GCN-1
Accuracy: 34.31 ± 1.31
node-classification-on-chameleonH2GCN-1
Accuracy: 52.96 ± 2.09
node-classification-on-chameleonH2GCN-2
Accuracy: 58.38 ± 1.76
node-classification-on-chameleon-60-20-20H2GCN
1:1 Accuracy: 52.30 ± 0.48
node-classification-on-citeseer-48-32-20H2GCN
1:1 Accuracy: 77.11 ± 1.57
node-classification-on-cora-48-32-20-fixedH2GCN
1:1 Accuracy: 87.87 ± 1.20
node-classification-on-cora-60-20-20-randomH2GCN
1:1 Accuracy: 87.52 ± 0.61
node-classification-on-cornellH2GCN-1
Accuracy: 78.11 ± 6.68
node-classification-on-cornellH2GCN-2
Accuracy: 79.46 ± 4.80
node-classification-on-cornell-60-20-20H2GCN
1:1 Accuracy: 86.23 ± 4.71
node-classification-on-non-homophilicH2GCN
1:1 Accuracy: 86.23 ± 4.71
node-classification-on-non-homophilic-1H2GCN
1:1 Accuracy: 87.5 ± 1.77
node-classification-on-non-homophilic-10H2GCN
1:1 Accuracy: 35.70 ± 1.00
node-classification-on-non-homophilic-11H2GCN
1:1 Accuracy: 60.11 ± 2.15
node-classification-on-non-homophilic-12H2GCN
1:1 Accuracy: 36.48 ± 1.86
node-classification-on-non-homophilic-13H2GCN
1:1 Accuracy: 81.31 ± 0.60
node-classification-on-non-homophilic-2H2GCN
1:1 Accuracy: 85.90 ± 3.53
node-classification-on-non-homophilic-4H2GCN
1:1 Accuracy: 52.30 ± 0.48
node-classification-on-non-homophilic-6H2GCN
1:1 Accuracy: 67.22±0.90
node-classification-on-non-homophilic-7H2GCN
1:1 Accuracy: 82.70 ± 5.28
node-classification-on-non-homophilic-8H2GCN
1:1 Accuracy: 87.65 ± 4.98
node-classification-on-penn94H2GCN
Accuracy: 81.31 ± 0.60
node-classification-on-pubmed-48-32-20-fixedH2GCN
1:1 Accuracy: 89.49 ± 0.38
node-classification-on-pubmed-60-20-20-randomH2GCN
1:1 Accuracy: 87.78 ± 0.28
node-classification-on-squirrelH2GCN-1
Accuracy: 28.98 ± 1.97
node-classification-on-squirrelH2GCN-2
Accuracy: 32.33 ± 1.94
node-classification-on-squirrel-60-20-20H2GCN
1:1 Accuracy: 30.39 ± 1.22
node-classification-on-texasH2GCN-1
Accuracy: 83.24 ± 7.07
node-classification-on-texasH2GCN-2
Accuracy: 80.00 ± 6.77
node-classification-on-texas-60-20-20-randomH2GCN
1:1 Accuracy: 85.90 ± 3.53
node-classification-on-wisconsinH2GCN-1
Accuracy: 84.31 ± 3.70
node-classification-on-wisconsinH2GCN-2
Accuracy: 83.14 ± 4.26
node-classification-on-wisconsin-60-20-20H2GCN
1:1 Accuracy: 87.5 ± 1.77

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Beyond Homophily in Graph Neural Networks: Current Limitations and Effective Designs | Papers | HyperAI