基于距离约束的知识图链接预测研究

Li Wei, Fangfang Liu
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引用次数: 1

摘要

大规模知识图中存在大量未被发现的隐性知识,因此知识图的链接预测是一个重要的课题。以TransE为代表的翻译模型是研究比较成熟的链接预测算法。它们将知识图中的实体和关系投影到一些连续的向量空间中,并根据每条知识调整关系和实体的向量表示。然而,在非1对1关系的情况下,多个实体向量将竞争空间中的相同坐标位置。针对这一问题,本文提出了一种改进的方法。通过对非1对1关系的竞争实体施加距离约束,我们可以缩小它们之间的差异。每个竞争主体在适应一个三元组的同时会考虑其他竞争主体,从而达到每个竞争主体作为一个整体接近于竞争的坐标点的状态。距离约束可以作为一种优化的手段应用于现有的翻译模型。在FB15K和WN18数据集上进行了实验,实验结果表明我们提出的方法是有效的。
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The Research of Link Prediction in Knowledge Graph based on Distance Constraint
Large-scale knowledge graphs have a lot of hidden knowledge which has not been discovered, so the link prediction of the knowledge graph is an important topic. Translation models represented by TransE are the well-researched algorithms of link prediction. They project the entities and the relations in the knowledge graphs into some continuous vector spaces, and adjust the vector representations of the relations and the entities according to each piece of knowledge. However, in the case of a non-1-to-1 relationship, multiple entity vectors will compete for the same coordinate position in the space. Aiming at this problem, this paper proposes an improved method. By imposing a distance constraint on the competitive entities of a non-1-to-1 relationship, we can narrow the differences between them. Each entity will consider the other competitive entities while adapting itself to fit a triplet, so as to reach the status that each competitive entity is close to the coordinate point of the competition as a whole. Distance constraint can be applied to the existing translation models as a means of optimization. Experiments are conducted on the datasets: FB15K and WN18, and the experimental results show that the method we proposed is effective.
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