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Ontology Mapping Constructing by means of Low Rank Distance Matrix Optimization

机译:通过低秩距离矩阵优化构建本体映射构造

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Ontology mapping, based on similarity calculation,aims to find the similar concepts among different ontologies. Inorder to mathematically represent concepts, it is common torepresent all information of a concept in a fixed dimensionalvector. Therefore, the similarity calculation can be convertedinto a distance calculation between vectors, and the smallerthe distance is, the larger the similarity will be. In this paper,the low-rank matrix learning strategy is used to obtain thecorresponding ontology mapping strategy. The core idea of themethod is to control the upper bound of the distance of thesimilar vertex pairs in the sample and the lower bound of thedistance of dissimilar vertex pairs. At the same time, the rankof the matrix is integrated into the optimization conditions. Theeffectiveness of the proposed ontology trick is illustrated by theconstruction of ontology mapping on three ontology data.
机译:基于相似性计算的本体映射旨在在不同的本体中找到类似的概念。在数学上表示概念,它是常见的尺寸传感器中概念的所有信息。因此,相似性计算可以转换为距离的距离计算,并且距离越小,相似度越大。在本文中,使用低级矩阵学习策略来获得对应的本体映射策略。 HOSETHOD的核心思想是控制样品中同米的顶点对的距离的上限和不同的顶点对的下限。同时,矩阵的等级集成到优化条件中。所提出的本体技巧的无效化由本体论映射的构建说明了三个本体数据。

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