期刊文献+

本体的自动构建方法 被引量:7

The methods of ontology automatic building
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摘要 基于本体的信息集成方法是解决语义异构的最有效途径,但是传统的本体构建需要大量的人力物力。借助人工智能技术和Word Net等知识库实现本体的自动构建,将节省大量的社会成本,将是现在以及未来的本体构建方面研究的重点。文中对当今世界上主流的本体自动构建方法进行归纳总结,得出未来本体自动构建技术的主要发展方向。 The method of information integration based on ontology is the most effective way to solve the semantic heterogeneity,but the traditional ontology construction requires a ot ofmanpower material resources. With the help of artificial intelligence technology and ealizeautomatic build of ontology, such as WordNet knowledge base will save a lot of social costs, will be the focus of the present and future aspects of building ontology research. In this paper, the mainstream in the world today paper summarizes the method of building ontology automatically, it is concluded that the future main direction of ontology automatic building technology.
机构地区 军械工程学院
出处 《电子设计工程》 2015年第15期39-41,共3页 Electronic Design Engineering
关键词 本体 信息集成 自动构建 方法 人工智能 ontology information integration automatic building method artificial intelligence
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参考文献6

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二级参考文献31

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