Semantic enrichment in ontology mapping using concept similarity computing

V. Shunmughavel, P. Jaganathan
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引用次数: 5

Abstract

In semantic web ontology heterogeneity is a big bottleneck of ontology application, and ontology mapping is the base for integration of heterogeneous ontology. The ontology mapping model contains several aspects, and concept similarity computing is the most important part. This paper presents a concept similarity computing algorithm combining lexical matching to achieve semantic enrichment and high accuracy results. It has been proved that the evaluation of concept similarity between ontologies is more accurate by considering both semantic similarity and semantic relativity.
概念相似度计算在本体映射中的语义充实
在语义web中,本体异构是本体应用的一大瓶颈,而本体映射是实现异构本体集成的基础。本体映射模型包括几个方面,概念相似度计算是其中最重要的部分。本文提出了一种结合词汇匹配的概念相似度计算算法,以实现语义丰富和高精度的结果。事实证明,同时考虑语义相似度和语义相对性对本体间概念相似度的评价更为准确。
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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