The paper discusses the challenges faced by existing HGNNs in handling complex heterogeneous graphs with numerous relation types. It introduces BG-HGNN as a solution that integrates different relations into a unified feature space, improving efficiency and performance significantly. The empirical studies show that BG-HGNN outperforms existing models in terms of parameter efficiency, training throughput, and accuracy.
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arxiv.org
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