Sf-Tree: An Efficient And Flexible Structure For Estimating Selectivity Of Simple Path Expressions With Statistical Accuracy Guarantee

DATABASE SYSTEMS FOR ADVANCED APPLICATIONS(2004)

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摘要
Estimating the selectivity of a simple path expression (SPE) is essential for selecting the most efficient evaluation plans for XML queries. To estimate selectivity, we need an efficient and flexible structure to store a summary of the path expressions that are present in an XML document collection. In this paper we propose a new structure called SF-Tree to address the selectivity estimation problem. SF-Tree provides a flexible way for the users to choose among accuracy, space requirement and selectivity retrieval speed. It makes use of signature files to store the SPEs in a tree form to increase the selectivity retrieval speed and the accuracy of the retrieved selectivity. Our analysis shows that the probability that a selectivity estimation error occurs decreases exponentially with respect to the error size.
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关键词
SF-tree, query processing, selectivity estimation, XML, path expressions
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