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首页> 外文期刊>Journal of Intelligent Information Systems >A multi-aspect approach to ontology matching based on Bayesian cluster ensembles
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A multi-aspect approach to ontology matching based on Bayesian cluster ensembles

机译:基于贝叶斯群集合奏的本体论匹配的多方面方法

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Abstract With the progressive increase in the number of existing ontologies, ontology matching became a challenging task. Ontology matching is a crucial step in the ontology integration process and its goal is to find correspondent elements in heterogeneous ontologies. A trend of clustering-based solutions for ontology matching has evolved, based on a divide-and-conquer strategy, which partitions ontologies, clusters similar partitions and restricts the matching to ontology elements of similar partitions. Nevertheless, most of these solutions considered solely the terminological aspect, ignoring other ontology aspects that can contribute to the final matching results. In this work, we developed a novel solution for ontology matching based on a consensus clustering of multiple aspects of ontology partitons. We partitioned the ontologies applying Community Detection techniques and applied Bayesian Cluster Ensembles (BCE) to find a consensus clustering among the terminological, topological and extensional aspects of ontology partitions. The matching results of our experimental study indicated that a BCE-based solution with three clusters best captured the contributions of the aspects, in comparison to other consensual solutions. The results corroborated the benefits of the synergy between the ontology aspects to the ontology alignment. We also verified that the BCE-based solution for three clusters yielded higher matching scores than other state-of-the-art solutions. Besides, our proposed methods structurize a configurable framework, which allows adding other ontology aspects and also other techniques.
机译:摘要随着现有本体数量的逐步增加,本体匹配成为一个具有挑战性的任务。本体匹配是本体集成过程中的一个重要步骤,其目标是在异构本体中找到通信元素。基于分频和征服策略,对本体匹配的基于聚类的解决方案的趋势已经进化,该策略分区本体,群集类似的分区并限制与类似分区的本体元素的匹配。尽管如此,大多数这些解决方案仅考虑了术语方面,忽略了可以有助于最终匹配结果的其他本体论方面。在这项工作中,我们为基于本体本体部分的多个方面的共识聚类,开发了一种新的本体匹配解决方案。我们分区了应用社区检测技术和应用贝叶斯群集合奏(BCE)的本体,以查找本体分区术语,拓扑和拓展方面的共识聚类。我们的实验研究的匹配结果表明,与其他同意解决方案相比,基于BCE的解决方案具有三个集群的贡献,其方面最佳地捕获了这些方面的贡献。结果证实了本体方面与本体对齐之间的协同作用的好处。我们还证实了三种群集的基于BCE的解决方案产生的匹配得分高于其他最先进的解决方案。此外,我们提出的方法结构化了可配置的框架,其允许添加其他本体方面以及其他技术。

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