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An Entropy-Based Class Assignment Detection Approach for RDF Data

机译:RDF数据的基于熵的类分配检测方法

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The RDF-style Knowledge Bases usually contain a certain level of noises known as Semantic Web data quality issues. This paper has introduced a new Semantic Web data quality issue called Incorrect Class Assignment problem that shows the incorrect assignment between instances in the instance-level and corresponding classes in an ontology. We have proposed an approach called CAD (Class Assignment Detector) to find the correctness and incorrectness of relationships between instances and classes by analyzing features of classes in an ontology. Initial experiments conducted on a dataset demonstrate the effectiveness of CAD.
机译:RDF样式的知识库通常包含一定程度的噪声,称为语义Web数据质量问题。本文介绍了一个新的语义Web数据质量问题,称为不正确的类分配问题,该问题显示了实例级实例与本体中相应类之间的不正确分配。我们提出了一种称为CAD(类分配检测器)的方法,该方法通过分析本体中类的特征来查找实例与类之间关系的正确性和不正确性。对数据集进行的初步实验证明了CAD的有效性。

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