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Merging ontology by semantic enrichment and combining similarity measures

机译:通过语义丰富合并本体并组合相似性度量

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摘要

In this paper, we present a new approach to merge OWL ontologies by semantic enrichment of initial ontologies. This work is situated in the general context of stored information heterogeneity in a decisional system such as data, metadata and knowledge, for combination and reconciliation these forms of information by mediation. To add a semantic dimension to the merger, our approach based on semantic enrichment of initial ontologies, this is achieved by enriching initial ontologies by a set of metadata that annotate their concepts with synonyms and homonyms for each concept, via the use of WordNet, or semantic enrichment of an expert, then it generates a thesaurus for each local ontology to build the global thesaurus. Our method focuses on computing semantic similarity between concepts of ontologies, and based on a weighted combination of computing similarity methods, we use syntactic, lexical, structural and semantic techniques, for generating the correspondence matrix; from this latter we generate the merged ontology.
机译:在本文中,我们提出了一种通过初始本体的语义丰富来合并OWL本体的新方法。这项工作位于决策系统(例如数据,元数据和知识)中存储的信息异质性的一般上下文中,用于通过调解来组合和协调这些形式的信息。为了给合并增加语义维度,我们的方法基于初始本体的语义丰富,这是通过使用一组元数据来丰富初始本体的,这些元数据通过使用WordNet使用每个概念的同义词和同义注释它们的概念,或者专家的语义丰富化,然后为每个局部本体生成一个同义词库以构建全局同义词库。我们的方法着重于计算本体概念之间的语义相似度,并且基于计算相似度方法的加权组合,我们使用句法,词汇,结构和语义技术来生成对应矩阵。根据后者,我们生成了合并的本体。

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