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A semantic similarity measure based on information distance for ontology alignment

机译:基于信息距离的语义相似度度量用于本体对齐

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摘要

Ontology alignment is the key point to reach interoperability over ontologies. In semantic web environment, ontologies are usually distributed and heterogeneous and thus it is necessary to find the alignment between them before processing across them. Many efforts have been conducted to automate the alignment by discovering the correspondence between entities of ontologies. However, some problems are still obvious, and the most crucial one is that it is almost impossible to extract semantic meaning of a lexical label that denotes the entity by traditional methods. In this paper, ontology alignment is formalized as a problem of information distance metric. In this way, discovery of optimal alignment is cast as finding out the correspondences with minimal information distance. We demonstrate a novel measure named link weight that uses semantic characteristics of two entities and Google page count to calculate an information distance similarity between them. The experimental results show that our method is able to create alignments between different lexical entities that denotes the same ones. These results outperform the typical ontology alignment methods like PROMPT (Noy and Musen, 2000) [38], QOM (Ehrig and Staab, 2004) [12], and APFEL (Ehrig et al., 2005) [13] in terms of semantic precision and recall.
机译:本体一致性是实现本体互操作性的关键。在语义Web环境中,本体通常是分布式的并且是异构的,因此有必要在它们之间进行处理之前找到它们之间的对齐方式。通过发现本体之间的对应关系,已经进行了许多努力来使对齐自动进行。但是,仍然存在一些问题,最关键的问题是,几乎不可能用传统方法提取表示实体的词汇标签的语义。在本文中,本体对齐被形式化为信息距离度量的问题。以此方式,将最佳对准的发现转化为找出具有最小信息距离的对应关系。我们演示了一种名为链接权重的新颖度量,该度量使用两个实体的语义特征和Google页面计数来计算它们之间的信息距离相似性。实验结果表明,我们的方法能够在表示相同词法的不同词法实体之间创建对齐方式。这些结果在语义方面优于PROMPT(Noy and Musen,2000)[38],QOM(Ehrig and Staab,2004)[12]和APFEL(Ehrig et al。,2005)[13]。精度和召回率。

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