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首页> 外文期刊>Computing and informatics >OPTIMIZING ONTOLOGY ALIGNMENTS THROUGH NSGA-Ⅱ WITHOUT USING REFERENCE ALIGNMENT
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OPTIMIZING ONTOLOGY ALIGNMENTS THROUGH NSGA-Ⅱ WITHOUT USING REFERENCE ALIGNMENT

机译:通过NSGA-Ⅱ优化本体对齐方式而不使用引用对齐方式

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摘要

Ontology is widely used to solve the data heterogeneity problems on the semantic web, but the available ontologies could themselves introduce heterogeneity. In order to reconcile these ontologies to implement the semantic interoperability, we need to find the relationships among the entities in various ontologies, and the process of identifying them is called ontology alignment. In all the existing matching systems that use evolutionary approaches to optimize their parameters, a reference alignment between two ontologies to be aligned should be given in advance which could be very expensive to obtain especially when the scale of ontologies is considerably large. To address this issue, in this paper we propose a novel approach to utilize the NSGA-Ⅱ to optimize the ontology alignments without using the reference alignment. In our approach, an adaptive aggregation strategy is presented to improve the efficiency of optimizing process and two approximate evaluation measures, namely match coverage and match ratio, are introduced to replace the classic recall and precision on reference alignment to evaluate the quality of the alignments. Experimental results show that our approach is effective and can find the solutions that are very close to those obtained by the approaches using reference alignment, and the quality of alignments is in general better than that of state of the art ontology matching systems such as GOAL and SAMBO.
机译:本体被广泛用于解决语义Web上的数据异质性问题,但是可用的本体本身可能会引入异质性。为了协调这些本体以实现语义互操作性,我们需要找到各种本体中实体之间的关系,并且将它们识别的过程称为本体对齐。在所有使用进化方法优化其参数的现有匹配系统中,应预先给出要对齐的两个本体之间的参考对齐,这可能会非常昂贵,特别是当本体的规模很大时。为了解决这个问题,在本文中我们提出了一种新颖的方法来利用NSGA-Ⅱ来优化本体比对而不使用参考比对。在我们的方法中,提出了一种自适应聚合策略来提高优化过程的效率,并引入了两种近似的评估措施,即匹配覆盖率和匹配率,以取代经典的召回率和参考比对的精度来评估比对的质量。实验结果表明,我们的方法是有效的,可以找到与使用参考对齐方式所获得的解决方案非常接近的解决方案,并且对齐方式的质量总体上优于最新的本体匹配系统(如GOAL和桑博

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