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A Clustering-Based Approach for Large-Scale Ontology Matching

机译:基于聚类的大规模本体匹配方法

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Schema and ontology matching have attracted a great deal of interest among researchers. Despite the advances achieved, the large matching problem still presents a real challenge, such as it is a time-consuming and memory-intensive process. We therefore propose a scalable, clustering-based matching approach that breaks up the large matching problem into smaller matching problems. In particular, we first introduce a structure-based clustering approach to partition each schema graph into a set of disjoint subgraphs (clusters). Then, we propose a new measure that efficiently determines similar clusters between every two sets of clusters to obtain a set of small matching tasks. Finally, we adopt the matching prototype COMA++ to solve individual matching tasks and combine their results. The experimental analysis reveals that the proposed method permits encouraging and significant improvements.
机译:图式和本体匹配引起了研究人员的极大兴趣。尽管取得了进步,但是大匹配问题仍然是一个真正的挑战,例如这是一个耗时且占用大量内存的过程。因此,我们提出了一种可伸缩的,基于聚类的匹配方法,该方法将较大的匹配问题分解为较小的匹配问题。特别是,我们首先引入了一种基于结构的聚类方法,将每个架构图划分为一组不相交的子图(集群)。然后,我们提出了一种新的措施,可以有效地确定每两组群集之间的相似群集,以获得一组小的匹配任务。最后,我们采用匹配的原型COMA ++来解决单个匹配任务并组合其结果。实验分析表明,所提出的方法允许令人鼓舞的重大改进。

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