LGSIOct 23, 2023

Efficient Heterogeneous Graph Learning via Random Projection

arXiv:2310.14481v236 citationsh-index: 16
Originality Incremental advance
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This addresses efficiency issues in large-scale heterogeneous graph learning for researchers and practitioners, representing an incremental improvement over existing pre-computation-based methods.

The paper tackles the efficiency limitations of Heterogeneous Graph Neural Networks (HGNNs) by proposing RpHGNN, a hybrid pre-computation-based method that achieves state-of-the-art results on seven benchmark datasets and is 230% faster than the most effective baseline.

Heterogeneous Graph Neural Networks (HGNNs) are powerful tools for deep learning on heterogeneous graphs. Typical HGNNs require repetitive message passing during training, limiting efficiency for large-scale real-world graphs. Recent pre-computation-based HGNNs use one-time message passing to transform a heterogeneous graph into regular-shaped tensors, enabling efficient mini-batch training. Existing pre-computation-based HGNNs can be mainly categorized into two styles, which differ in how much information loss is allowed and efficiency. We propose a hybrid pre-computation-based HGNN, named Random Projection Heterogeneous Graph Neural Network (RpHGNN), which combines the benefits of one style's efficiency with the low information loss of the other style. To achieve efficiency, the main framework of RpHGNN consists of propagate-then-update iterations, where we introduce a Random Projection Squashing step to ensure that complexity increases only linearly. To achieve low information loss, we introduce a Relation-wise Neighbor Collection component with an Even-odd Propagation Scheme, which aims to collect information from neighbors in a finer-grained way. Experimental results indicate that our approach achieves state-of-the-art results on seven small and large benchmark datasets while also being 230% faster compared to the most effective baseline. Surprisingly, our approach not only surpasses pre-processing-based baselines but also outperforms end-to-end methods.

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