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CLASCN:Candidate Network Selection for Efficient Top-k Keyword Queries over Databases
作者姓名:张俊  彭朝晖  王珊  聂惠静
作者单位:School of Information Renmin University of China,Beijing 100872,China Key Laboratory of Data Engineering and Knowledge Engineering,Ministry of Education,Beijing 100872,China Computer Science and Technology College,Dalian Maritime University,Dalian 116026,China,School of Information,Renmin University of China,Beijing 100872,China Key Laboratory of Data Engineering and Knowledge Engineering,Ministry of Education,Beijing 100872,China,School of Information,Renmin University of China,Beijing 100872,China Key Laboratory of Data Engineering and Knowledge Engineering,Ministry of Education,Beijing 100872,China,School of Information,Renmin University of China,Beijing 100872,China Key Laboratory of Data Engineering and Knowledge Engineering,Ministry of Education,Beijing 100872,China
基金项目:This work is supported by the National Natural Science Foundation of China under Grant Nos. 60473069 and 60496325.
摘    要:Keyword Search Over Relational Databases (KSORD) enables casual or Web users easily access databases through free-form keyword queries. Improving the performance of KSORD systems is a critical issue in this area. In this paper, a new approach CLASCN (Classification, Learning And Selection of Candidate Network) is developed to efficiently perform top-fc keyword queries in schema-graph-based online KSORD systems. In this approach, the Candidate Networks (CNs) from trained keyword queries or executed user queries are classified and stored in the databases, and top-fc results from the CNs are learned for constructing CN Language Models (CNLMs). The CNLMs are used to compute the similarity scores between a new user query and the CNs from the query. The CNs with relatively large similarity score, which are the most promising ones to produce top-fc results, will be selected and performed. Currently, CLASCN is only applicable for past queries and New All-keyword-Used (NAU) queries which are frequently submitted queries. Extensive experiments also show the efficiency and effectiveness of our CLASCN approach.


CLASCN: Candidate Network Selection for Efficient Top-k Keyword Queries over Databases
Jun Zhang,Zhao-Hui Peng,Shan Wang,Hui-Jing Nie.CLASCN:Candidate Network Selection for Efficient Top-k Keyword Queries over Databases[J].Journal of Computer Science and Technology,2007,22(2).
Authors:Jun Zhang  Zhao-Hui Peng  Shan Wang  Hui-Jing Nie
Abstract:
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