Representing n-ary relations in the Semantic Web

Log. J. IGPL Pub Date : 2019-11-18 DOI:10.1093/jigpal/jzz047
M. Giunti, G. Sergioli, G. Vivanet, Simone Pinna
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引用次数: 7

Abstract

Knowledge representation is a central issue for Artificial Intelligence and the Semantic Web. In particular, the problem of representing n-ary relations in RDF-based languages such as RDFS or OWL by no means is an obvious one. With respect to previous attempts, we show why the solutions proposed by the well known W3C Working Group Note on n-ary relations are not satisfactory on several scores. We then present our abstract model for representing n-ary relations as directed labeled graphs, and we show how this model gives rise to a new ontological pattern (parametric pattern) for the representation of such relations in the Semantic Web. To this end, we define PROL (Parametric Relational Ontology Language). PROL is an ontological language designed to express any n-ary fact as a parametric pattern, which turns out to be a special RDF graph. The vocabulary of PROL is defined by a simple RDFS ontology. We argue that the parametric pattern may be particularly beneficial in the context of the Semantic Web, in virtue of its high expressive power, technical simplicity, and faithful meaning rendition. Examples are also provided.
表示语义网中的n元关系
知识表示是人工智能和语义网的核心问题。特别是,在基于rdf的语言(如RDFS或OWL)中表示n元关系的问题绝不是一个显而易见的问题。关于以前的尝试,我们说明了为什么著名的W3C工作组关于n-任意关系的说明提出的解决方案在几个方面都不令人满意。然后,我们提出了将n元关系表示为有向标记图的抽象模型,并展示了该模型如何产生用于在语义Web中表示此类关系的新本体论模式(参数模式)。为此,我们定义了PROL(参数关系本体语言)。PROL是一种本体论语言,旨在将任何n元事实表示为参数模式,这是一种特殊的RDF图。PROL的词汇表由一个简单的RDFS本体定义。我们认为,参数化模式在语义网的环境中可能特别有益,因为它具有强大的表现力、技术上的简单性和忠实的意义再现。还提供了示例。
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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