GraphMetaP: Efficient MetaPath Generation for Dynamic Heterogeneous Graph Models

Haiheng He, Dan Chen, Long Zheng, Yu Huang, Haifeng Liu, Chao Liu, Xiaofei Liao, Hai Jin
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Abstract

Metapath-based heterogeneous graph models (MHGM) show excellent performance in learning semantic and structural information in heterogeneous graphs. Metapath matching is an essential processing step in MHGM to find all metapath instances, bringing significant overhead compared to the total model execution time. Even worse, in dynamic heterogeneous graphs, metapath instances require to be rematched while graph updated. In this paper, we observe that only a small fraction of metapath instances change and propose GraphMetaP, an efficient incremental metapath maintenance method in order to eliminate the matching overhead in dynamic heterogeneous graphs. GraphMetaP introduces a novel format for metapath instances to capture the dependencies among the metapath instances. The format incrementally maintains metapath instances based on the graph updates to avoide the rematching metapath overhead for the updated graph. Furthermore, GraphMetaP uses the fold way to simplify the format in order to recover all metapath instances faster. Experiments show that GraphMetaP enables efficient maintenance of metapath instances on dynamic heterogeneous graphs and outperforms 172.4X on average compared to the matching metapath method.
GraphMetaP:动态异构图模型的高效元路径生成
基于元路径的异构图模型(MHGM)在异构图的语义和结构信息学习方面表现出优异的性能。元路径匹配是MHGM中查找所有元路径实例的重要处理步骤,与总模型执行时间相比,会带来很大的开销。更糟糕的是,在动态异构图中,更新图时需要重新匹配元路径实例。在本文中,我们观察到只有一小部分元路径实例发生了变化,并提出了一种有效的增量元路径维护方法GraphMetaP,以消除动态异构图中的匹配开销。GraphMetaP为元路径实例引入了一种新的格式,用于捕获元路径实例之间的依赖关系。该格式基于图更新增量地维护元路径实例,以避免为更新的图重新匹配元路径开销。此外,GraphMetaP使用折叠方式来简化格式,以便更快地恢复所有元路径实例。实验表明,GraphMetaP能够有效地维护动态异构图上的元路径实例,与匹配的元路径方法相比,平均性能高出172.4X。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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