This paper proposes a formal framework model for the intelligent information retrieval. It outlines the typical modeling method, knowledge representation and retrieval algorithm for instantiation of the given formal framework. It provides the statistic analysis of the modeling framework, knowledge representation and retrieval algorithm for 30 intelligent retrieval systems. It summarizes three kinds of solutions for instantiation of the formal intelligent retrieval model.
孔敬. 智能检索模型研究[J]. 现代图书情报技术, 2005, 21(3): 37-42.
Kong Jing. Study on Intelligent Retrieval System Model. New Technology of Library and Information Service, 2005, 21(3): 37-42.
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