基于多目标粒子群算法的本体对齐

U. Marjit, M. Mandal
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引用次数: 4

摘要

本体对齐对异构语义数据源之间的互操作性起着至关重要的作用。它是两个或多个本体之间的一组对应关系。度量不同本体实体之间的语义相似度的方法有很多。为了获得全面、准确的结果,对所有相似度度量进行了综合。因此,将不同的相似度度量集成到一个相似度度量中是一个具有挑战性的问题。一般来说,与各种相似度量相对应的权重是手动或通过某种方法分配的。问题在于它缺乏最优性。有许多基于进化的方法来寻找最优解,但它们优化的是单个目标函数。本文提出了一种多目标粒子群优化算法,用于实现不同相似度对应的不同权重。然后计算相似性聚合函数以确定最优对齐。在这里,两个目标的精度和召回率同时优化,并产生了一个最优对齐,其中f-measure非常高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiobjective particle swarm optimization based ontology alignment
Ontology alignment plays a vital role for interoperability among the heterogeneous semantic data sources. It is a set of correspondences between two or more ontologies. There are lots of methods to measure the semantic similarity between entities from several ontologies. To acquire the comprehensive and precise results, all the similarity measures are integrated. Therefore, integrating different similarity measures into a single similarity metric pose a challenging problem. In general, weights corresponding to various similarity measures are assigned manually or through some method. The problem is that it suffers from lack of optimality. There are many evolutionary based approaches to find the optimal solution but they optimize a single objective function. In this article, a multiobjective particle swarm optimization algorithm is proposed for achieving various weights correspond to different similarity measures. Then subsequently similarity aggregation function is calculated for identifying the optimal alignment. Here, two objectives precision and recall are simultaneously optimized and a optimal alignment is produced for which f-measure is very high.
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