Graph Hawkes Neural Network for Forecasting on Temporal Knowledge Graphs

arXiv: Learning Pub Date : 2020-02-14 DOI:10.24432/C50018
Zhen Han, Yunpu Ma, Yuyi Wang, Stephan Günnemann, Volker Tresp
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引用次数: 46

Abstract

The Hawkes process has become a standard method for modeling self-exciting event sequences with different event types. A recent work has generalized the Hawkes process to a neurally self-modulating multivariate point process, which enables the capturing of more complex and realistic impacts of past events on future events. However, this approach is limited by the number of possible event types, making it impossible to model the dynamics of evolving graph sequences, where each possible link between two nodes can be considered as an event type. The number of event types increases even further when links are directional and labeled. To address this issue, we propose the Graph Hawkes Neural Network that can capture the dynamics of evolving graph sequences and can predict the occurrence of a fact in a future time instance. Extensive experiments on large-scale temporal multi-relational databases, such as temporal knowledge graphs, demonstrate the effectiveness of our approach.
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基于时序知识图的图Hawkes神经网络预测
Hawkes过程已经成为建模具有不同事件类型的自激事件序列的标准方法。最近的一项工作将Hawkes过程推广到一个神经自调节的多元点过程,这使得捕获过去事件对未来事件的更复杂和现实的影响成为可能。然而,这种方法受到可能的事件类型数量的限制,使得不可能对不断发展的图序列的动态建模,其中两个节点之间的每个可能链接都可以被视为事件类型。当链接具有方向性并带有标签时,事件类型的数量甚至会进一步增加。为了解决这个问题,我们提出了图霍克斯神经网络,它可以捕捉不断发展的图序列的动态,并可以预测未来时间实例中事实的发生。在大规模时态多关系数据库(如时态知识图)上的大量实验证明了我们的方法的有效性。
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