Exploiting affinity propagation for automatic acquisition of domain concept in ontology learning

Iqbal Qasim, Jin-Woo Jeong, Sharifullah Khan, Dong-Ho Lee
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引用次数: 2

Abstract

Semantic Web uses domain ontology to bridge the gap among the members of a domain through minimization of conceptual and terminological incompatibilities. However, several barriers must be overcome before domain ontology becomes a practical and useful tool. One important issue is identification and selection of domain concepts for domain ontology learning when several hundreds or even thousands of terms are extracted and available from relevant text documents shared among the members of a domain. We present a novel domain concept acquisition and selection approach for ontology learning that uses affinity propagation algorithm, which takes as input semantic and structural similarity between pairs of extracted terms called data points. Real-valued messages are passed between data points (terms) until high quality set of exemplars (concepts) and cluster iteratively emerges. All exemplars will be considered as domain concepts for learning domain ontologies. Our empirical results show that our approach achieves high precision and recall in selection of domain concepts using less number of iterations.
利用亲和传播实现本体学习中领域概念的自动获取
语义Web使用领域本体,通过最小化概念和术语的不兼容性来弥合领域成员之间的差距。然而,在领域本体成为一种实用而有用的工具之前,还必须克服一些障碍。当从领域成员共享的相关文本文档中提取出数百甚至数千个术语时,一个重要的问题是识别和选择领域本体学习的领域概念。我们提出了一种新的领域概念获取和选择方法,该方法使用亲和传播算法,将抽取的术语对(称为数据点)之间的语义和结构相似性作为输入。实值消息在数据点(术语)之间传递,直到高质量的范例(概念)和聚类迭代出现。所有示例都将被视为学习领域本体的领域概念。实验结果表明,该方法使用较少的迭代次数,在领域概念的选择上达到了较高的精度和召回率。
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