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首页> 外文期刊>International journal of semantic computing >AN ANALYSIS OF MULTIPLE SIMILARITY MEASURESFOR ONTOLOGY MAPPING PROBLEM
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AN ANALYSIS OF MULTIPLE SIMILARITY MEASURESFOR ONTOLOGY MAPPING PROBLEM

机译:本体映射问题的多个相似度量分析

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摘要

This paper presents an analysis of similarity measures for the ontology mapping prob-lem. To that end, 48 similarity measures such as string matching and knowledge based similarities that have been widely used in ontology mapping systems are defined. The similarity measures are investigated by discriminant analysis with a real-world data set. As a result, it was possible to identify 22 effective similarity measures for the ontology mapping problem out of 48 possible similarity measures. The identified measures have a wide variety in the type of similarity. To test whether the identified similarity mea-sures are effective for the problem, experiments were conducted with all 48 similarity measures and the 22 identified similarity measures by using two major machine learning methods, decision tree and support vector machine. The experimental results show that the performance of the 48 cases and the 22 cases is almost the same regardless of the machine learning method. This implies that effective features for the ontology mapping problem were successfully identified.
机译:本文对本体映射问题的相似性度量进行了分析。为此,定义了48种相似性度量,例如字符串匹配和基于知识的相似性,它们已在本体映射系统中广泛使用。通过使用真实数据集进行判别分析来研究相似性度量。结果,有可能在48种可能的相似性度量中找到22种有效的相似性度量用于本体映射问题。所确定的度量在相似性类型上有多种。为了测试所确定的相似性度量对于该问题是否有效,通过使用两种主要的机器学习方法(决策树和支持向量机)对所有48个相似性度量和22个已识别相似性度量进行了实验。实验结果表明,无论采用哪种机器学习方法,48例和22例的性能几乎相同。这意味着已成功识别了本体映射问题的有效特征。

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