EvoKG: Jointly Modeling Event Time and Network Structure for Reasoning over Temporal Knowledge Graphs

Namyong Park, Fuchen Liu, Purvanshi Mehta, D. Cristofor, C. Faloutsos, Yuxiao Dong
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引用次数: 30

Abstract

How can we perform knowledge reasoning over temporal knowledge graphs (TKGs)? TKGs represent facts about entities and their relations, where each fact is associated with a timestamp. Reasoning over TKGs, i.e., inferring new facts from time-evolving KGs, is crucial for many applications to provide intelligent services. However, despite the prevalence of real-world data that can be represented as TKGs, most methods focus on reasoning over static knowledge graphs, or cannot predict future events. In this paper, we present a problem formulation that unifies the two major problems that need to be addressed for an effective reasoning over TKGs, namely, modeling the event time and the evolving network structure. Our proposed method EvoKG jointly models both tasks in an effective framework, which captures the ever-changing structural and temporal dynamics in TKGs via recurrent event modeling, and models the interactions between entities based on the temporal neighborhood aggregation framework. Further, EvoKG achieves an accurate modeling of event time, using flexible and efficient mechanisms based on neural density estimation. Experiments show that EvoKG outperforms existing methods in terms of effectiveness (up to 77% and 116% more accurate time and link prediction) and efficiency.
EvoKG:时间知识图推理的事件时间和网络结构联合建模
我们如何在时序知识图(TKGs)上进行知识推理?tkg表示关于实体及其关系的事实,其中每个事实都与时间戳相关联。对TKGs进行推理,即从随时间变化的KGs中推断出新的事实,对于许多提供智能服务的应用程序至关重要。然而,尽管现实世界的数据可以用tkg表示,但大多数方法都集中在静态知识图的推理上,或者不能预测未来的事件。在本文中,我们提出了一个问题表述,该问题表述统一了对TKGs进行有效推理需要解决的两个主要问题,即事件时间建模和不断演变的网络结构。我们提出的方法EvoKG在一个有效的框架中对这两个任务进行联合建模,该框架通过循环事件建模捕捉tkg中不断变化的结构和时间动态,并基于时间邻域聚合框架对实体之间的相互作用进行建模。此外,EvoKG使用基于神经密度估计的灵活高效机制,实现了事件时间的精确建模。实验表明,EvoKG在有效性和效率方面都优于现有方法(时间和链接预测准确率分别提高77%和116%)。
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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