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Multi-Channel Graph Neural Network for Entity Alignment

机译:用于实体对齐的多通道图神经网络

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Entity alignment typically suffers from the issues of structural heterogeneity and limited seed alignments. In this paper, we propose a novel Multi-channel Graph Neural Network model (MuGNN) to learn alignment-oriented knowledge graph (KG) embeddings by robustly encoding two KGs via multiple channels. Each channel encodes KGs via different relation weighting schemes with respect to self-attention towards KG completion and cross-KG attention for pruning exclusive entities respectively, which are further combined via pooling techniques. Moreover, we also infer and transfer rule knowledge for completing two KGs consistently. MuGNN is expected to reconcile the structural differences of two KGs, and thus make better use of seed alignments. Extensive experiments on five publicly available datasets demonstrate our superior performance (5% Hits@l up on average).
机译:实体比对通常遭受结构异质性和种子比对受限的问题。在本文中,我们提出了一种新颖的多通道图神经网络模型(MuGNN),以通过多通道对两个KG进行鲁棒编码来学习面向对齐的知识图(KG)嵌入。对于分别针对修剪独占实体的自我注意和完成KG的注意,每个通道通过不同的关系加权方案对KG进行编码,然后通过合并技术进一步组合这些KG。此外,我们还推论和传输规则知识,以一致地完成两个KG。 MuGNN有望调和两个KG的结构差异,从而更好地利用种子排列。在五个可公开获得的数据集上进行的广泛实验证明了我们的出色性能(平均命中率为5%)。

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