Approaches to Relating and Integrating Semantic Data from Heterogeneous Sources

J. Keeney, Aidan Boran, Ivan Bedini, C. Matheus, P. Patel-Schneider
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引用次数: 10

Abstract

Integrating and relating heterogeneous data using inference is one of the cornerstones of semantic technologies and there are a variety of ways in which this may be achieved. Cross source relationships can be automatically translated or inferred using the axioms of RDFS/OWL, via user generated rules, or as the result of SPARQL query result transformations. For a given problem it is not always obvious which approach (or combination of approaches) will be the most effective and few guidelines exist for making this choice. This paper discusses these three approaches and demonstrates them using an "acquaintance" relationship drawn from data residing in common RDF information sources such as FOAF and DBLP data stores. The implementation of each approach is described along with practical considerations for their use. Quantitative and qualitative evaluation results of each approach are presented and the paper concludes with initial suggestions for guiding principles to help in selecting an appropriate approach for integrating heterogeneous semantic data sources.
异构源语义数据的关联与集成方法
使用推理集成和关联异构数据是语义技术的基石之一,有多种方法可以实现这一目标。可以使用RDFS/OWL的公理、通过用户生成的规则或作为SPARQL查询结果转换的结果自动翻译或推断跨源关系。对于给定的问题,并不总是很明显哪种方法(或方法的组合)将是最有效的,并且很少有指导方针可以做出这种选择。本文讨论了这三种方法,并使用从驻留在公共RDF信息源(如FOAF和DBLP数据存储)中的数据绘制的“熟人”关系来演示它们。描述了每种方法的实现及其使用的实际考虑。给出了每种方法的定量和定性评估结果,并对指导原则提出了初步建议,以帮助选择合适的方法来集成异构语义数据源。
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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