Combining RDF Graph Data and Embedding Models for an Augmented Knowledge Graph

A. Nikolov, P. Haase, Daniel M. Herzig, Johannes Trame, A. Kozlov
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引用次数: 3

Abstract

Vector embedding models have recently become popular for encoding both structured and unstructured data. In the context of knowledge graphs such models often serve as additional evidence supporting various tasks related to the knowledge base population: e.g., information extraction or link prediction to expand the original dataset. However, the embedding models themselves are often not used directly alongside structured data: they merely serve as additional evidence for structured knowledge extraction. In the metaphactory knowledge graph management platform, we use federated hybrid SPARQL queries for combining explicit information stated in the graph, implicit information from the associated embedding models, and information extracted using vector embeddings in a transparent way for the end user. In this paper we show how we integrated RDF data with vector space models to construct an augmented knowledge graph to be used in customer applications.
结合RDF图数据和嵌入模型的增广知识图
向量嵌入模型最近在编码结构化和非结构化数据方面变得很流行。在知识图的背景下,这些模型通常作为支持与知识库人口相关的各种任务的额外证据:例如,信息提取或链接预测以扩展原始数据集。然而,嵌入模型本身通常不直接与结构化数据一起使用:它们只是作为结构化知识提取的附加证据。在中期知识图谱管理平台中,我们使用联邦混合SPARQL查询,将图中声明的显式信息、相关嵌入模型中的隐式信息以及使用向量嵌入提取的信息以透明的方式组合在一起,供最终用户使用。在本文中,我们展示了如何将RDF数据与向量空间模型集成在一起,以构建一个用于客户应用程序的增强知识图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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