论文标题
CEP3:图表上神经点过程的社区活动预测
CEP3: Community Event Prediction with Neural Point Process on Graph
论文作者
论文摘要
许多现实世界的应用程序可以作为事件预测在连续的时间动态图(CTDG)上进行预测,在这些事件中,两个实体之间的定时事件发生的发生作为边缘表示为边缘,其出现时间戳在图中。在本文中,我们提出了一个组合图神经网络和标记时间点过程(MTPP)的新型模型,该模型共同预测了多个链接事件及其在CTDG上对社区的时间戳。此外,为了将模型扩展到大图,我们将共同事件预测问题分解为三个更容易的有条件概率建模问题。为了评估我们的模型的有效性以及此类分解背后的理由,我们建立了一组基准测试和评估指标,以实现此事件预测。我们的实验证明了模型的准确性和训练效率的卓越性能。
Many real world applications can be formulated as event forecasting on Continuous Time Dynamic Graphs (CTDGs) where the occurrence of a timed event between two entities is represented as an edge along with its occurrence timestamp in the graphs.However, most previous works approach the problem in compromised settings, either formulating it as a link prediction task on the graph given the event time or a time prediction problem given which event will happen next. In this paper, we propose a novel model combining Graph Neural Networks and Marked Temporal Point Process (MTPP) that jointly forecasts multiple link events and their timestamps on communities over a CTDG. Moreover, to scale our model to large graphs, we factorize the jointly event prediction problem into three easier conditional probability modeling problems.To evaluate the effectiveness of our model and the rationale behind such a decomposition, we establish a set of benchmarks and evaluation metrics for this event forecasting task. Our experiments demonstrate the superior performance of our model in terms of both model accuracy and training efficiency.