Relation Specific Transformations for Open World Knowledge Graph Completion

Haseeb Shah, Johannes Villmow, A. Ulges
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引用次数: 6

Abstract

We propose an open-world knowledge graph completion model that can be combined with common closed-world approaches (such as ComplEx) and enhance them to exploit text-based representations for entities unseen in training. Our model learns relation-specific transformation functions from text-based to graph-based embedding space, where the closed-world link prediction model can be applied. We demonstrate state-of-the-art results on common open-world benchmarks and show that our approach benefits from relation-specific transformation functions (RST), giving substantial improvements over a relation-agnostic approach.
面向开放世界知识图谱补全的关系特定转换
我们提出了一个开放世界知识图谱完成模型,该模型可以与常见的封闭世界方法(如ComplEx)相结合,并对它们进行增强,以利用基于文本的表示来处理训练中未见过的实体。我们的模型学习了从基于文本到基于图的嵌入空间的特定于关系的转换函数,其中可以应用闭世界链接预测模型。我们在常见的开放世界基准上展示了最先进的结果,并表明我们的方法受益于特定于关系的转换函数(RST),与关系无关的方法相比有了实质性的改进。
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