A Novel Embedding Model for Knowledge Graph Completion Based on Quaternion

Haipeng Gao, Kun Yang, Y. Yang, Ke Qin
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引用次数: 1

Abstract

In recent years, knowledge graph completion methods have been extensively studied, in which QuatE learned embeddings of entities and relations in quaternion space and achieved state-of-the-art results. However, QuatE has two main problems: 1) simple modeling operation leads to weak interaction between entities and relations and inflexible representation. 2) complex relations are not to be considered. In this paper, we propose a novel model, en-QuatE, with a dynamic mapping strategy to explicitly capture a variety of relational patterns, enhancing the feature interaction capability between elements of the triplet. The mapping strategy dynamically, associated with the relation, used to learn adaptive the entity embedding vectors in the quaternion space via Hamilton product. Experiment results show en-QuatE achieves significant performance on WNISRR. In particular, the MR (Mean Rank) evaluation has relatively increased by 15% on WNISRR.
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基于四元数的知识图补全嵌入模型
近年来,知识图补全方法得到了广泛的研究,其中QuatE学习了四元数空间中实体和关系的嵌入,取得了较好的效果。然而,QuatE存在两个主要问题:1)简单的建模操作导致实体和关系之间的交互弱,表示不灵活。2)不考虑复杂的关系。在本文中,我们提出了一个新的模型en-QuatE,它采用动态映射策略来显式捕获各种关系模式,增强了三元组元素之间的特征交互能力。动态映射策略通过Hamilton积学习自适应四元数空间中的实体嵌入向量,并与实体之间的关系相关联。实验结果表明,enquate在WNISRR上取得了显著的性能。特别是,MR (Mean Rank)评价在WNISRR上相对提高了15%。
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