Selectivity estimation for spatial joins

N. An, Zhen-Yu Yang, A. Sivasubramaniam
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引用次数: 52

Abstract

Spatial joins are important and time consuming operations in spatial database management systems. It is crucial to be able to accurately estimate the performance of these operations so that one can derive efficient query execution plans, and even develop/refine data structures to improve their performance. While estimation techniques for analyzing the performance of other operations, such as range queries, on spatial data has come under scrutiny, the problem of estimating selectivity for spatial joins has been little explored. The limited forays into this area have used parametric techniques, which are largely restrictive on the datasets that they can be used for since they tend to make simplifying assumptions about the nature of the datasets to be joined. Sampling and histogram based techniques, on the other hand, are much less restrictive. However, there has been no prior attempt at understanding the accuracy of sampling techniques, or developing histogram based techniques to estimate the selectivity of spatial joins. Apart from extensively evaluating the accuracy of sampling techniques for the very first time, this paper presents two novel histogram based solutions for spatial join estimation. Using a wide spectrum of both real and synthetic datasets, it is shown that one of our proposed schemes, called Geometric Histograms (GH), can accurately quantify the selectivity of spatial joins.
空间连接的选择性估计
空间连接是空间数据库管理系统中重要且耗时的操作。能够准确地估计这些操作的性能是至关重要的,这样就可以获得有效的查询执行计划,甚至开发/改进数据结构以提高其性能。虽然用于分析空间数据上的其他操作(如范围查询)的性能的估计技术已经受到了严格的审查,但估计空间连接的选择性的问题却很少被探索。对这一领域的有限尝试使用了参数化技术,这在很大程度上限制了它们可以用于的数据集,因为它们倾向于对要连接的数据集的性质做出简化的假设。另一方面,基于采样和直方图的技术限制要少得多。然而,在理解采样技术的准确性或开发基于直方图的技术来估计空间连接的选择性方面,还没有事先的尝试。除了首次广泛评估采样技术的准确性外,本文还提出了两种新的基于直方图的空间连接估计解决方案。使用广泛的真实和合成数据集,表明我们提出的一种称为几何直方图(GH)的方案可以准确地量化空间连接的选择性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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