Forecasting future events is a fundamental challenge for temporal knowledge graphs (tKG). As in real life predicting a mean function is most of the time not sufficient, but the question remains how confident can we be about our prediction? Thus, in this work, we will introduce a novel graph neural network architecture (WGP-NN) employing (weighted) Gaussian processes (GP) to jointly model the temporal evolution of the occurrence probability of events and their time-dependent uncertainty. Especially we employ Gaussian processes to model the uncertainty of future links by their ability to predict predictive variance. This is in contrast to existing works, which are only able to express uncertainties in the learned entity representations. Moreover, WGP-NN can model parameter-free complex temporal and structural dynamics of tKGs in continuous time. We further demonstrate the model's state-of-the-art performance on two real-world benchmark datasets.
翻译:预测未来事件是时间知识图表(tKG)的一个基本挑战。 因为在现实生活中,预测一个中值函数的预测大部分时间是不够的,但问题仍然是我们对于预测的信心有多大? 因此,在这项工作中,我们将引入一个新的图形神经网络结构(WGP-NN),使用(加权)高斯进程,共同模拟事件发生概率及其时间性不确定性的时间演变。特别是我们使用高斯进程,通过预测预测预测差异的能力来模拟未来链接的不确定性。这与现有的工程形成对比,后者只能表达所学实体代表的不确定性。此外,WGP-NNN可以连续地模拟tKGs无参数的复杂时间和结构动态。我们进一步展示了两个真实世界基准数据集的模型最新性表现。