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Hetero2^22Net: Heterophily-aware Representation Learning on Heterogenerous Graphs

18 October 2023
Jintang Li
Zheng Wei
Jiawang Dan
Jing Zhou
Yuchang Zhu
Ruofan Wu
Baokun Wang
Zhang Zhen
Changhua Meng
Hong Jin
Zibin Zheng
Liang Chen
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Abstract

Real-world graphs are typically complex, exhibiting heterogeneity in the global structure, as well as strong heterophily within local neighborhoods. While a growing body of literature has revealed the limitations of common graph neural networks (GNNs) in handling homogeneous graphs with heterophily, little work has been conducted on investigating the heterophily properties in the context of heterogeneous graphs. To bridge this research gap, we identify the heterophily in heterogeneous graphs using metapaths and propose two practical metrics to quantitatively describe the levels of heterophily. Through in-depth investigations on several real-world heterogeneous graphs exhibiting varying levels of heterophily, we have observed that heterogeneous graph neural networks (HGNNs), which inherit many mechanisms from GNNs designed for homogeneous graphs, fail to generalize to heterogeneous graphs with heterophily or low level of homophily. To address the challenge, we present Hetero2^22Net, a heterophily-aware HGNN that incorporates both masked metapath prediction and masked label prediction tasks to effectively and flexibly handle both homophilic and heterophilic heterogeneous graphs. We evaluate the performance of Hetero2^22Net on five real-world heterogeneous graph benchmarks with varying levels of heterophily. The results demonstrate that Hetero2^22Net outperforms strong baselines in the semi-supervised node classification task, providing valuable insights into effectively handling more complex heterogeneous graphs.

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