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Anchor-Prior: An effective algorithm for ontology integration

机译:Anchor-Prior:一种有效的本体集成算法

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Most previous studies of ontology integration have simply involved blind or exhaustive matching among all concepts across ontologies. Therefore, the computational complexity of integrating two ontologies is O(n2). In addition, semantic mismatches, logical inconsistencies and conceptual conflicts in ontology integration have not yet become avoidable. The main contribution of the approach presented here is to reduce the computational complexity and to enhance the accuracy of ontology integration. The key idea of this approach is to start from an Anchor (two matched concepts) to work towards a collection of matched pairs among its neighboring concepts by computing similarities between the “priorly” collected concepts across the ontologies starting from the anchor. The “priorly” means that the PMC, which provides additional suggestions for possible matching concepts, is used to determine for which concepts the similarity should be priorly computed. The algorithm proposed here, based on the idea described above, is called Anchor-Prior algorithm. Experimental comparisons of computational complexity and accuracy with previous approaches are carried out. The results show that the proposed algorithm is effective in terms of both performance (computational time O(n*logn)) and accuracy by avoiding an exponential increase in the number of unmatchable concepts to be checked and by reducing concept mismatches.
机译:最先前的本体集成研究只需在本体跨境的所有概念中都涉及盲目或彻底的匹配。因此,集成了两个本体的计算复杂度是O(n 2 )。此外,在本体集成中的语义不匹配,逻辑不一致和概念冲突尚未变得可避免。此处呈现的方法的主要贡献是降低计算复杂性,并提高本体集成的准确性。这种方法的关键思想是从锚(两个匹配的概念)开始,通过计算从锚点开始的本体中的“以后”收集的概念之间的相似性来开始对其相邻概念的匹配对的集合。 “恰好”表示PMC提供了用于可能匹配概念的其他建议,用于确定应该完全计算相似性的概念。此处基于上述思想所提出的算法称为锚前算法。进行了先前方法的计算复杂性和准确性的实验比较。结果表明,该算法在性能(计算时间O(N * LOGN))方面是有效的,并且通过避免要检查的无与伦比的概念的数量和通过减少概念不匹配来进行指数增加。

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