Improving Few-Shot Inductive Learning on Temporal Knowledge Graphs using Confidence-Augmented Reinforcement Learning

Zifeng Ding, Jingpei Wu, Zong-Xun Li, Yunpu Ma, Volker Tresp
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引用次数: 2

Abstract

Temporal knowledge graph completion (TKGC) aims to predict the missing links among the entities in a temporal knwoledge graph (TKG). Most previous TKGC methods only consider predicting the missing links among the entities seen in the training set, while they are unable to achieve great performance in link prediction concerning newly-emerged unseen entities. Recently, a new task, i.e., TKG few-shot out-of-graph (OOG) link prediction, is proposed, where TKGC models are required to achieve great link prediction performance concerning newly-emerged entities that only have few-shot observed examples. In this work, we propose a TKGC method FITCARL that combines few-shot learning with reinforcement learning to solve this task. In FITCARL, an agent traverses through the whole TKG to search for the prediction answer. A policy network is designed to guide the search process based on the traversed path. To better address the data scarcity problem in the few-shot setting, we introduce a module that computes the confidence of each candidate action and integrate it into the policy for action selection. We also exploit the entity concept information with a novel concept regularizer to boost model performance. Experimental results show that FITCARL achieves stat-of-the-art performance on TKG few-shot OOG link prediction.
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基于置信度增强强化学习改进时态知识图的少量归纳学习
时间知识图补全(TKGC)的目的是预测时间知识图中实体之间缺失的链接。大多数以前的TKGC方法只考虑预测训练集中看到的实体之间的缺失链接,而对于新出现的未见实体的链接预测无法取得很好的性能。最近,提出了一种新的任务,即TKG少镜头图外(OOG)链接预测,该任务要求TKGC模型对只有很少镜头观察样例的新出现实体具有很高的链接预测性能。在这项工作中,我们提出了一种结合了few-shot学习和强化学习的TKGC方法FITCARL来解决这个问题。在FITCARL中,agent遍历整个TKG来寻找预测答案。策略网络的设计是基于所遍历的路径来引导搜索过程。为了更好地解决少镜头设置中的数据稀缺性问题,我们引入了一个模块来计算每个候选动作的置信度,并将其集成到动作选择的策略中。我们还利用实体概念信息和一个新的概念正则化器来提高模型的性能。实验结果表明,FITCARL在TKG少射OOG链路预测上达到了最先进的性能。
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