Who Should I Engage with At What Time? A Missing Event Aware Temporal
Graph Neural Network
- URL: http://arxiv.org/abs/2301.08399v1
- Date: Fri, 20 Jan 2023 02:22:55 GMT
- Title: Who Should I Engage with At What Time? A Missing Event Aware Temporal
Graph Neural Network
- Authors: Mingyi Liu, Zhiying Tu, Xiaofei Xu, and Zhongjie Wang
- Abstract summary: We propose MTGN, a missing event-aware temporal graph neural network.
We show that MTGN significantly outperforms existing methods with up to 89% and 112% more accurate time and link prediction.
- Score: 4.770906657995415
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Temporal graph neural network has recently received significant attention due
to its wide application scenarios, such as bioinformatics, knowledge graphs,
and social networks. There are some temporal graph neural networks that achieve
remarkable results. However, these works focus on future event prediction and
are performed under the assumption that all historical events are observable.
In real-world applications, events are not always observable, and estimating
event time is as important as predicting future events. In this paper, we
propose MTGN, a missing event-aware temporal graph neural network, which
uniformly models evolving graph structure and timing of events to support
predicting what will happen in the future and when it will happen.MTGN models
the dynamic of both observed and missing events as two coupled temporal point
processes, thereby incorporating the effects of missing events into the
network. Experimental results on several real-world temporal graphs demonstrate
that MTGN significantly outperforms existing methods with up to 89% and 112%
more accurate time and link prediction. Code can be found on
https://github.com/HIT-ICES/TNNLS-MTGN.
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