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Optimizing ontology alignments through a Memetic Algorithm using both MatchFmeasure and Unanimous Improvement Ratio

机译:同时使用MatchFmeasure和一致改进率的Memetic算法优化本体排列

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摘要

There are three main drawbacks of current evolutionary approaches for determining the weights of ontology matching system. The first drawback is that it is difficult to simultaneously deal with several pairs of ontologies, i.e. finding a universal weight configuration that can be used for different ontology pairs without adjustment The second one is that 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. The last one arises from f-measure, a generally used evaluation metric of the alignment's quality, which may cause the bias improvement of the solution. To overcome these three defects, in this paper, we propose to use both MatchFmeasure, a rough evaluation metric on no reference alignment to approximate f-measure, and Unanimous Improvement Ratio (UIR), a measure that complements MatchFmeasure, in the process of optimizing the ontology alignments by Memetic Algorithm (MA). The experimental results have shown that the MA using both MatchFmeasure and UIR is effective to simultaneously align multiple pairs of ontologies and avoid the bias improvement caused by MatchFeasure. Moreover, the comparison with state-of-the-art ontology matching systems further indicates the effectiveness of the proposed method.
机译:用于确定本体匹配系统的权重的当前进化方法存在三个主要缺点。第一个缺点是难以同时处理几对本体,即,找到无需调整即可用于不同本体对的通用配重配置。第二个缺点是应给两个要对齐的本体之间提供参考对齐尤其是当本体的规模很大时,这可能是非常昂贵的。最后一个来自f-measure,它是路线质量的常用评估指标,可能会导致解决方案的偏差得到改善。为了克服这三个缺陷,在本文中,我们建议在优化过程中同时使用MatchFmeasure和对改进MatchFmeasure进行补充的统一改进率(UIR),UIR是一种不使用参考对齐的粗略评估指标来近似f-measure。 Memetic Algorithm(MA)进行本体比对。实验结果表明,使用MatchFmeasure和UIR的MA可以有效地同时对齐多对本体,并避免由MatchFeasure引起的偏差改善。此外,与最新的本体匹配系统的比较进一步表明了该方法的有效性。

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