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Message Passing for Hyper-Relational Knowledge Graphs

机译:消息传递给超关系知识图形

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Hyper-relational knowledge graphs (KGs) (e.g., Wikidata) enable associating additional key-value pairs along with the main triple to disambiguate, or restrict the validity of a fact. In this work, we propose a message passing based graph encoder - STARE capable of modeling such hyper-relational KGs. Unlike existing approaches, STARE can encode an arbitrary number of additional information (qualifiers) along with the main triple while keeping the semantic roles of qualifiers and triples intact. We also demonstrate that existing benchmarks for evaluating link prediction (LP) performance on hyper-relational KGs suffer from fundamental flaws and thus develop a new Wikidata-based dataset - WD50K. Our experiments demonstrate that StarE based LP model outperforms existing approaches across multiple benchmarks. We also confirm that leveraging qualifiers is vital for link prediction with gains up to 25 MRR points compared to triple-based representations.
机译:超关系知识图(kgs)(例如,wikidata)使与主要三倍一起关联附加键值对以消除歧义,或限制事实的有效性。在这项工作中,我们提出了一种基于Graph Confoder的消息 - 凝视能够建模这种超义kgs。与现有方法不同,凝视可以与主要的三倍进行任意数量的附加信息(限定符),同时保持限定符的语义角色并完整。我们还展示了用于评估超关系KG的链路预测(LP)性能的现有基准遭受基础缺陷,从而开发了基于Wikidata的数据集 - WD50K。我们的实验表明,基于凝视的LP模型优于多个基准的现有方法。我们还确认,与基于三重陈述相比,利用限定员对最多25克的增益的链接预测至关重要。

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