eSPARQL: Representing and Reconciling Agnostic and Atheistic Beliefs in RDF-star Knowledge Graphs

Xiny Pan, Daniel Hernández, Philipp Seifer, Ralf Lämmel, Steffen Staab
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Abstract

Over the past few years, we have seen the emergence of large knowledge graphs combining information from multiple sources. Sometimes, this information is provided in the form of assertions about other assertions, defining contexts where assertions are valid. A recent extension to RDF which admits statements over statements, called RDF-star, is in revision to become a W3C standard. However, there is no proposal for a semantics of these RDF-star statements nor a built-in facility to operate over them. In this paper, we propose a query language for epistemic RDF-star metadata based on a four-valued logic, called eSPARQL. Our proposed query language extends SPARQL-star, the query language for RDF-star, with a new type of FROM clause to facilitate operating with multiple and sometimes conflicting beliefs. We show that the proposed query language can express four use case queries, including the following features: (i) querying the belief of an individual, (ii) the aggregating of beliefs, (iii) querying who is conflicting with somebody, and (iv) beliefs about beliefs (i.e., nesting of beliefs).
eSPARQL:在 RDF-star 知识图谱中表示和调和不可知论与无神论信仰
在过去几年中,我们看到了将多种来源的信息整合在一起的大型知识图谱的出现。有时,这些信息是以关于其他断言的断言的形式提供的,定义了断言有效的上下文。然而,目前还没有关于这些 RDF-star 语句语义的建议,也没有对其进行操作的内置工具。在本文中,我们提出了一种基于四值逻辑的RDF-star元数据查询语言,称为eSPARQL。我们提出的查询语言扩展了RDF-star的查询语言SPARQL-star,增加了一种新型FROM子句,以方便操作多个有时相互冲突的信念。我们展示了所提出的查询语言可以表达四种用例查询,包括以下功能:(i) 查询个人的信念,(ii) 聚集信念,(iii) 查询谁与某人有冲突,以及 (iv) 关于信念的信念(即信念嵌套)。
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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