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首页> 外文期刊>International Journal of Intelligent Information Technologies >A New Dynamic Neighbourhood-Based Semantic Dissimilarity Measure for Ontology
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A New Dynamic Neighbourhood-Based Semantic Dissimilarity Measure for Ontology

机译:基于新的本体的动态邻域语义不相似度量

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摘要

The semantic web is a global initiative which employs ontologies to offer rich, semantic-based knowledge representation. Concepts in these ontologies are explored to find (dis)similarities between them using (dis)similarity measures. Despite the existence of numerous (dis)similarity measures, none have dynamically determined the quantum of information required to discover (dis)similarities between concepts. In this article, a new, efficient, feature-based semantic dissimilarity measure is proposed where the prime novelty lies in the dynamic selection of the semantic neighourhood (features) of the concepts. The neighbourhood is dynamically selected in accordance with the local density of the concept and the density of the ontology determined by the proposed density coefficient. Further, the proposed measure also scales down the dissimilarity value in accordance with the depth of the concept pair, using the novel Depth Coefficient.
机译:语义Web是一种全球倡议,采用本体提供丰富,基于语义的知识表示。 这些本体中的概念探讨了使用(DIS)相似度量的(DIS)相似之处。 尽管存在许多(DIS)相似度措施,但无动态地确定发现(DIS)之间的相似性所需的信息量。 在本文中,提出了一种新的,高效的,基于特征的语义不相似度量,其中Prime新颖性在于概念的语义邻年(特征)的动态选择。 根据概念的局部密度和由所提出的密度系数确定的本体密度的局部密度动态地选择该邻域。 此外,所提出的措施还根据概念对的深度来缩小不同的概念对的深度值,使用新颖的深度系数。

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