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Selectivity Estimation Scheme for Spatial Topological Predicate Using Multi-Dimensional Histogram

机译:多维直方图的空间拓扑谓词选择性估计方案

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Many commercial database systems maintain histograms to summarize the contents of relations and permit the efficient estimation of query result sizes and the access plan cost In spatial database systems, most spatial query predicates are consisted of topological relationships between spatial objects, and it is very important to estimate the selectivity of those predicates for spatial query optimizer. In this paper, we propose a selectivity estimation scheme for spatial topological predicates based on the multi-dimensional histogram and the transformation scheme. Proposed scheme applies two-partition strategy on transformed object space to generate spatial histogram and estimates the selectivity of topological predicates based on the topological characteristics of the transformed space. Proposed scheme provides a way for estimating the selectivity without too much memory space usage and additional I/Os in most spatial query optimizers.
机译:许多商业数据库系统都维护直方图以总结关系的内容,并允许有效地估计查询结果的大小和访问计划的成本。在空间数据库系统中,大多数空间查询谓词由空间对象之间的拓扑关系组成,对于估计那些谓词对空间查询优化器的选择性。本文提出了一种基于多维直方图和变换方案的空间拓扑谓词选择性估计方案。提出的方案对变换后的对象空间应用了两部分策略,以生成空间直方图,并基于变换后的空间的拓扑特征估计拓扑谓词的选择性。所提出的方案提供了一种在大多数空间查询优化器中没有太多内存空间使用和额外I / O的情况下估计选择性的方法。

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