Discovering Domain Concepts and Hyponymy Relations by Text Relevance Classifying Based Iterative Web Searching

APSEC), 2012 19th Asia-Pacific(2012)

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摘要
Domain concepts and taxonomic relationships are an essential part of a domain ontology. They are used in a number of applications, including natural language processing, information retrieval, knowledge management and so on. Nowadays, with the continuous permeation of various kinds of Internet knowledge applications, numerous new concepts are emerged and released on to the Internet. So, the Internet has become an invaluable source of new concepts for almost every possible domain of knowledge. In order to ensure the domain ontologies keep pace with fast changing knowledge, we proposed an web searching based concepts and taxonomic relationships discovering approach. By our approach, the potential concepts on the Internet, which are taxonomically related with the give seeds concepts, can be discovered autonomously and iteratively. In this paper, the approach and a corresponding application in Chinese web pages are reported in detail. The experiments show that, our approach can catch the related domain concepts precisely, meanwhile, can reject irrelevant concepts and figure out the domain knowledge border definitely.
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关键词
domain knowledge border,hyponymy relation,new concept,taxonomic relationship,text relevance classification,domain ontology,pattern classification,information retrieval,iterative web searching,knowledge management,text relevance,internet knowledge application,possible domain,hyponymy relations,related domain concept,domain concept,web sites,internet,web searching based concept,taxonomy learning,ontologies (artificial intelligence),taxonomic relationships discovering approach,natural language processing,discovering domain concepts,text analysis,ontology learning,search engines,domain knowledge,chinese web page
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