论文标题

HISMATCH:基于历史结构匹配的时间知识图形推理

HiSMatch: Historical Structure Matching based Temporal Knowledge Graph Reasoning

论文作者

Li, Zixuan, Hou, Zhongni, Guan, Saiping, Jin, Xiaolong, Peng, Weihua, Bai, Long, Lyu, Yajuan, Li, Wei, Guo, Jiafeng, Cheng, Xueqi

论文摘要

时间知识图(TKG)是一个kgs的序列,该kgs具有相应的时间戳,它采用(\ emph {object},\ emph {resitation},\ emph {object},\ emph {timestamp})的形式采用四倍体。 TKG推理通过回答(\ emph {query entity},\ emph {query Relation},\ emph {??},\ emph {?这实际上是根据其历史结构之间的查询和候选实体之间的一项匹配任务,这反映了不同时间戳下实体的行为趋势。此外,最近的KG提供了所有实体的背景知识,这也有助于匹配。因此,在本文中,我们提出了\ textbf {hi} storical \ textbf {s} tructure \ textbf {match} ing(\ textbf {hismatch})模型。它应用了两个结构编码器来捕获查询和候选实体历史结构中包含的语义信息。此外,它采用了另一个编码器将背景知识集成到模型中。与最先进的基线相比,六个基准数据集的TKG推理实验表明,MRR的TKG推理实验可显着改善,MRR的性能提高了5.6%。

A Temporal Knowledge Graph (TKG) is a sequence of KGs with respective timestamps, which adopts quadruples in the form of (\emph{subject}, \emph{relation}, \emph{object}, \emph{timestamp}) to describe dynamic facts. TKG reasoning has facilitated many real-world applications via answering such queries as (\emph{query entity}, \emph{query relation}, \emph{?}, \emph{future timestamp}) about future. This is actually a matching task between a query and candidate entities based on their historical structures, which reflect behavioral trends of the entities at different timestamps. In addition, recent KGs provide background knowledge of all the entities, which is also helpful for the matching. Thus, in this paper, we propose the \textbf{Hi}storical \textbf{S}tructure \textbf{Match}ing (\textbf{HiSMatch}) model. It applies two structure encoders to capture the semantic information contained in the historical structures of the query and candidate entities. Besides, it adopts another encoder to integrate the background knowledge into the model. TKG reasoning experiments on six benchmark datasets demonstrate the significant improvement of the proposed HiSMatch model, with up to 5.6\% performance improvement in MRR, compared to the state-of-the-art baselines.

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