Temporal knowledge prediction is a crucial task for the event early warning that has gained increasing attention in recent years, which aims to predict the future facts by using relevant historical facts on the temporal knowledge graphs. There are two main difficulties in this prediction task. First, from the historical facts point of view, how to model the evolutionary patterns of the facts to predict the query accurately. Second, from the query perspective, how to handle the two cases where the query contains seen and unseen entities in a unified framework. Driven by the two problems, we propose a novel adaptive pseudo-siamese policy network for temporal knowledge prediction based on reinforcement learning. Specifically, we design the policy network in our model as a pseudo-siamese policy network that consists of two sub-policy networks. In sub-policy network I, the agent searches for the answer for the query along the entity-relation paths to capture the static evolutionary patterns. And in sub-policy network II, the agent searches for the answer for the query along the relation-time paths to deal with unseen entities. Moreover, we develop a temporal relation encoder to capture the temporal evolutionary patterns. Finally, we design a gating mechanism to adaptively integrate the results of the two sub-policy networks to help the agent focus on the destination answer. To assess our model performance, we conduct link prediction on four benchmark datasets, the experimental results demonstrate that our method obtains considerable performance compared with existing methods.
翻译:时间知识预测是事件预警的一项关键任务,近年来,事件预警日益引起人们的注意,目的是利用时间知识图上的相关历史事实预测未来的事实。预测任务有两个主要困难。首先,从历史事实的角度来看,如何模拟事实的演进模式以准确预测查询。第二,从查询角度,如何处理在统一框架内发现和看不见实体的两种案例。在这两个问题驱动下,我们提议建立一个创新的适应性假故事政策网络,以基于强化学习的时间知识预测为根据。具体地说,我们将模型中的政策网络设计成由两个次政策网络组成的假亚洲政策网络。在次政策网络一,代理人在实体关系路径上寻找查询的答案,以捕捉静止的演进模式。在次政策网络二,代理人在联系时间路径上寻找查询的答案。此外,我们开发了一种时间关系连接,以捕捉时间演变模式模式为基础的时间知识预测。最后,我们设计了一种模拟政策网络的伪造政策网络,我们用适应性实验性趋势的4项实验性结果,我们用实验性的方法将现有的实验性预测结果与实验性的方法进行对比。