Label-Wise Graph Convolutional Network for Heterophilic Graphs

15 Oct 2021  ·  Enyan Dai, Shijie Zhou, Zhimeng Guo, Suhang Wang ·

Graph Neural Networks (GNNs) have achieved remarkable performance in modeling graphs for various applications. However, most existing GNNs assume the graphs exhibit strong homophily in node labels, i.e., nodes with similar labels are connected in the graphs. They fail to generalize to heterophilic graphs where linked nodes may have dissimilar labels and attributes. Therefore, in this paper, we investigate a novel framework that performs well on graphs with either homophily or heterophily. More specifically, we propose a label-wise message passing mechanism to avoid the negative effects caused by aggregating dissimilar node representations and preserve the heterophilic contexts for representation learning. We further propose a bi-level optimization method to automatically select the model for graphs with homophily/heterophily. Theoretical analysis and extensive experiments demonstrate the effectiveness of our proposed framework for node classification on both homophilic and heterophilic graphs.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Node Classification arXiv-year LW-GCN Accuracy 55.8±0.2 # 7
Node Classification Chameleon LW-GCN Accuracy 74.4±1.4 # 15
Node Classification Crocodile LW-GCN Accuracy 79.7±0.4 # 1
Node Classification Squirrel LW-GCN Accuracy 62.6±1.6 # 17
Node Classification Wisconsin LW-GCN Accuracy 86.9±2.2 # 26

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