Graph Hawkes Neural Network for Forecasting on Temporal Knowledge Graphs
- URL: http://arxiv.org/abs/2003.13432v3
- Date: Sun, 14 Jun 2020 21:48:23 GMT
- Title: Graph Hawkes Neural Network for Forecasting on Temporal Knowledge Graphs
- Authors: Zhen Han, Yunpu Ma, Yuyi Wang, Stephan G\"unnemann, Volker Tresp
- Abstract summary: Hawkes process has become a standard method for modeling self-exciting event sequences with different event types.
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.
- Score: 38.56057203198837
- License: http://creativecommons.org/publicdomain/zero/1.0/
- 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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