Multi-relational graph is a ubiquitous and important data structure, allowing flexible representation of multiple types of interactions and relations between entities. Similar to other graph-structured data, link prediction is one of the most important tasks on multi-relational graphs and is often used for knowledge completion. When related graphs coexist, it is of great benefit to build a larger graph via integrating the smaller ones. The integration requires predicting hidden relational connections between entities belonged to different graphs (inter-domain link prediction). However, this poses a real challenge to existing methods that are exclusively designed for link prediction between entities of the same graph only (intra-domain link prediction). In this study, we propose a new approach to tackle the inter-domain link prediction problem by softly aligning the entity distributions between different domains with optimal transport and maximum mean discrepancy regularizers. Experiments on real-world datasets show that optimal transport regularizer is beneficial and considerably improves the performance of baseline methods.
翻译:多关系图是一个无处不在的重要数据结构,允许灵活地代表不同实体之间的多种互动和关系。与其他图表结构化数据类似,链接预测是多关系图上最重要的任务之一,常常用于知识的完成。当相关图表同时存在时,通过整合较小的图形来构建一个更大的图表将大有裨益。整合要求预测各实体之间的隐藏关系联系属于不同的图表(跨域链接预测)。然而,这对专门为同一图表实体之间的联系预测而设计的现有方法(内域链接预测)构成真正的挑战。在本研究中,我们提出了一种新办法,通过软化地将不同区域之间的实体分布与最佳运输以及最大平均差异调节器相匹配,解决跨部的预测问题。在现实世界数据集上进行的实验表明,最佳运输定律器是有益的,并且大大改进了基线方法的性能。