Extracting Meta-knowledge from Multi-source Knowledge base with Concept Segmentation Method

Xia Li, Bei Wu
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Abstract

The paper proposes a concept segmentation method to extract meta-knowledge from the multi-source knowledge base. We improve the traditional structure-based extracting method by using the concept hierarchical partition. The concept and concept relationship can be described with ontology model, which can discover the semantic relationship between concepts. Then a self-learning of meta-knowledge model is set up which can optimize the meta-knowledge description. Finally an empirical study is carried out by implementing the meta-knowledge extraction process from multi-source knowledge bass for educational resources.
用概念分割方法从多源知识库中提取元知识
提出了一种从多源知识库中提取元知识的概念分割方法。采用层次划分概念对传统的基于结构的提取方法进行了改进。概念和概念关系可以用本体模型来描述,可以发现概念之间的语义关系。然后建立元知识的自学习模型,对元知识的描述进行优化。最后,通过实施多源教育资源知识库的元知识提取过程进行了实证研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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