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Concept type and relationship type classification based approach for identifying and prioritizing potentially interesting concepts in ontology matching

机译:基于概念类型和关系类型分类的方法,用于识别本体匹配中潜在有趣的概念并对其进行优先级排序

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Due to large and heterogeneous data present across various ontologies which are developed by different knowledge engineers with various backgrounds describe the concepts and their relations using different terminologies has lead to the construction of several ontologies with different or same terminologies for similar domain. The heterogeneity among different ontologies for representing the similar domains limits interoperability across the ontologies. For effective utilization of ontologies and to solve the heterogeneity problems ontology matching is used which is a technique that determines the matches between the concepts that are associated in distinct ontologies developed for the same domain. Due to the growth of large number of ontologies and increase in the size of the ontologies rapidly the need for search space optimization also becomes a challenging task. This can be handled by potentially identifying and prioritizing the rich semantic concepts and their associated relations from the large ontologies thereby filtering out the less important concepts using the proposed concept type and relationship type classification method by assigning weights to different concepts and their relations experimentally. This proposed methods takes into consideration of the existing concept type classification approach[1]and classifies into five novel concept types by assigning different weights to concepts that comes under different classifications and also proposes a method to assign weights for different types of relationships associated between two or more concepts. The proposed approach is different from the existing ranking and concept importance methods which assigns weights to different concepts and its associated relations based on certain features iteratively. The proposed approach is proved to be significant by experimentally assigning weights to a relatively small set of clusters of an ontology and the results helps to reduce the search space optimization of the ontology there by increasing the efficiency and effectiveness of the ontology matching system.
机译:由于存在于不同本体上的大量且异构的数据,这些数据是由具有不同背景的不同知识工程师开发的,其描述了概念及其使用不同术语的关系,因此导致了针对相似域的具有不同或相同术语的几种本体的构建。用于表示相似域的不同本体之间的异质性限制了整个本体之间的互操作性。为了有效利用本体并解决异构性问题,使用了本体匹配,这是一种确定在为同一领域开发的不同本体中关联的概念之间的匹配的技术。由于大量本体的增长和本体尺寸的迅速增加,对搜索空间优化的需求也成为一项具有挑战性的任务。这可以通过潜在地从大型本体中识别丰富的语义概念及其关联关系并对其进行优先级排序,从而通过使用权重分配给不同的概念及其关系进行实验,使用所提出的概念类型和关系类型分类方法来过滤次要概念,从而解决这些次要概念。该方法考虑了现有的概念类型分类方法[1],并通过对属于不同分类的概念分配不同的权重,将其分为五种新颖的概念类型,还提出了一种为两个之间关联的不同类型的关系分配权重的方法或更多概念。所提出的方法与现有的排序和概念重要性方法不同,后者基于迭代的某些特征,将权重分配给不同的概念及其关联关系。通过实验将权重分配给相对较小的一组本体集群,证明了所提出的方法是有意义的,并且结果有助于通过增加本体匹配系统的效率和有效性来减少本体的搜索空间优化。

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