The multi-relational Knowledge Base Question Answering (KBQA) system performs multi-hop reasoning over the knowledge graph (KG) to achieve the answer. Recent approaches attempt to introduce the knowledge graph embedding (KGE) technique to handle the KG incompleteness but only consider the triple facts and neglect the significant semantic correlation between paths and multi-relational questions. In this paper, we propose a Path and Knowledge Embedding-Enhanced multi-relational Question Answering model (PKEEQA), which leverages multi-hop paths between entities in the KG to evaluate the ambipolar correlation between a path embedding and a multi-relational question embedding via a customizable path representation mechanism, benefiting for achieving more accurate answers from the perspective of both the triple facts and the extra paths. Experimental results illustrate that PKEEQA improves KBQA models' performance for multi-relational question answering with explainability to some extent derived from paths.
翻译:多关系知识库问题解答(KBQA)系统对知识图(KG)进行多动脉推理,以找到答案。最近的一些方法试图引入知识图嵌入(KGE)技术来处理 KG 不完全性,但只考虑三重事实,忽视路径和多关系问题之间重要的语义相关性。在本文中,我们提出了一个路径和知识嵌入-强化多关系问题解答模式(PKEEQA),该模式利用KG各实体之间的多动脉道来评估路径嵌入和多关系问题嵌入通过可定制路径代表机制的双极相关性,从三重事实和额外路径的角度都有利于获得更准确的答案。实验结果表明,PKEEQA提高了多关系问题解答的KBQA模式的性能,并在一定程度上从路径中得出了解释性。