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An approach to merge domain ontologies using granular computing

机译:使用粒度计算合并域在本体的方法

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摘要

Granular computing is the emerging technique which performs data processing through making multiple levels of descriptions. Each level of description is expressed through granules or chunks of data also defined as information granules. The granule, the granule structure, and the granule layer are the heart of granular computing. Ontologies are vital information archives. On all disciplines of science and technology, ontologies are developed according to the requirements. Hence, the huge number of ontologies is available in the concerned domain which creates information duplication and storage problem. Merging of existing ontologies overcomes these issues. There are many merging approaches available. The existing approaches do not use granular computing for merging the ontologies. The proposed approach employs granular computing for merging the existing domain ontologies, thereby unifying multiple domain ontologies into a single representative domain ontology. For that, this research work proposes the following four granular computing processes, namely, association, isolation, purification, and reduction which can be applied over a group of similar nodes in the ontologies thereby unifying them. The proposed method achieves the ontology merging by performing two phases, namely similarity calculation phase and granular computing phase. The similarity calculation phase identifies the inter-label similarity between the labels of ontologies and computes the relevant group of nodes. Subsequently, granular computing applies association, isolation, purification, and reduction over a group of relevant nodes. The proposed approach is validated using the film industry and transportation domain ontologies and compared against its counterpart hybrid semantic similarity measure (HSSM). The results concluded that the proposed approach outperforms HSSM.
机译:粒度计算是通过制造多个描述来执行数据处理的新兴技术。每个级别的描述是通过颗粒或数据的颗粒或块的描述表示为信息颗粒。颗粒,颗粒结构和颗粒层是粒状计算的核心。本体是重要信息档案。在科学技术的所有学科中,本体是根据要求制定的。因此,有关域中的大量本体可以使用,以创建信息重复和存储问题。现有本体的合并克服了这些问题。有许多合并方法可用。现有方法不使用粒度计算来合并本体。该提出的方法采用粒度计算来合并现有域本体,从而将多个域本体统一到单个代表性域本体中。为此,本研究工作提出了以下四个粒状计算过程,即关联,隔离,净化和减少,其可以应用于本体中的一组类似节点,从而统一它们。所提出的方法通过执行两个阶段来实现本体合并,即相似性计算阶段和粒状计算阶段。相似度计算阶段标识本体标签与计算相关节点之间的标签间相似性。随后,粒度计算适用于一组相关节点的关联,隔离,净化和减少。使用电影行业和运输领域本体进行验证,并与其对应于混合语义相似度量(HSSM)进行验证。结果得出结论,提出的方法优于HSSM。

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