Efficient Inverted Lists and Query Algorithms for Structured Value Ranking in Update-Intensive Relational Databases

ICDE 2005: 21ST INTERNATIONAL CONFERENCE ON DATA ENGINEERING, PROCEEDINGS(2005)

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摘要
We propose a new ranking paradigm for relational databases called Structured Value Ranking (SVR). SVR uses structured data values to score (rank) the results of keyword search queries over text columns. Our main contribution is a new family of inverted list indices and associated query algorithms that can support SVR efficiently in update-intensive databases, where the structured data values (and hence the scores of documents) change frequently. Our experimental results on real and synthetic data sets using BerkeleyDB show that we can support SVR efficiently in relational databases.
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关键词
relational databases,update-intensive relational database,update-intensive relational databases,tree data structures,berkeleydb show,structured value ranking,berkeleydb,structured value,query algorithm,structured data value,synthetic data set,query algorithms,synthetic data,efficient inverted lists,keyword search query,data value,new family,value ranking,update-intensive databases,text analysis,inverted lists,new ranking paradigm,query processing,sql,motion pictures,computer science,relational database,internet,structured data,data engineering,technical report
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