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Hybridizing genetic algorithms and hill climbing for similarity aggregation in ontology matching

机译:本体匹配中相似性聚集的杂交遗传算法和爬山

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Ontology Matching aims at finding correspondences between two different ontologies with overlapping parts in order to bring them into a mutual agreement. The set of correspondences, called alignment, is obtained by computing an aggregated similarity value for all pairs of ontology entities through a weighted approach. Unfortunately, the similarity aggregation task is a very complex optimization process, above all, when no information is known about ontology characteristics. This work presents a hybrid approach which aims at efficiently optimizing the weights for the similarity aggregation task without knowing a priori the ontology features. The effectiveness of our approach is shown by aligning ontologies belonging to the well-known OAEI benchmark dataset and by executing a comparison based on the Wilcoxon's signed rank test which highlights that our proposal statistically outperforms both its genetic counterpart and a traditional no evolutionary approach.
机译:本体论匹配的目的在于在两个不同的本体与重叠部分之间找到对应关系,以使它们成为相互协议。通过通过加权方法计算所有对本体实体对的聚合的相似性值来获得称为对齐的一组对准。不幸的是,相似性聚合任务是一个非常复杂的优化过程,最重要的是,当没有关于本体特征的信息没有任何信息时。这项工作提出了一种混合方法,其旨在有效地优化相似性聚合任务的权重,而不知道本体特征。通过对众所周知的OAEI基准数据集进行对齐和通过基于Wilcoxon的签名等级测试来对准本体的比较来表明我们的方法的有效性,这突出了我们的提案,统计上的遗传对应物和传统的没有进化方法。

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