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SOIM: Similarity Measures on Ontology Instances Based on Mixed Features

机译:SOIM:基于混合特征的本体实例相似性度量

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Clustering has been widely applied to various domains to explore the useful patterns inside data. Clustering quality can be improved using Knowledge represented by ontology. Nevertheless, most traditional ontology-based clustering algorithms are limited to handle categorical instances. But in real case study, ontology contains both numerical and categorical attributes. In this paper, we propose a new method for clustering knowledge contained in the ontology based on mixed features. The main contribution is the proposition of new similarity measures that combine numerical and nominal variables along different dimensions (instances, attributes, and relation-ships). Three kinds of similarity measures are so defined: instances-based similarity IS, relations-based similarity RS and attributes-based similarity AS. These three measures are then combined into an overall similarity measure. This combined measure is used for clustering.
机译:聚类已广泛应用于各个领域,以探索数据内部的有用模式。使用本体表示的知识可以提高聚类质量。尽管如此,大多数传统的基于本体的聚类算法仅限于处理分类实例。但是在实际案例研究中,本体既包含数值属性又包含类别属性。在本文中,我们提出了一种基于混合特征的本体中知识的聚类新方法。主要的贡献是提出了新的相似性度量标准,该度量标准将沿不同维度(实例,属性和关系)的数字变量和名义变量结合在一起。这样定义了三种相似性度量:基于实例的相似性IS,基于关系的相似性RS和基于属性的相似性AS。然后将这三个量度组合为总体相似性量度。此组合的度量用于聚类。

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