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Selectivity Estimation in Spatial Databases

机译:空间数据库中的选择性估算

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Selectivity estimation of queries is an important and well-studied problem in relational database systems. In this paper, we examine selectivity estimation in the context of Geographic Information Systems, which manage spatial data such as points, lines, poly-lines and polygons. In particular, we focus on point and range queries over two-dimensional rectangular data. We propose several techniques based on using spatial indices, histograms, binary space partitionings (BSPs), and the novel notion of spatial skew. Our techniques carefully partition the input rectangles into subsets and approximate each partition accurately. We present a detailed experimental study comparing the proposed techniques and the best known sampling and parametric techniques. We evaluate them using synthetic as well as real-life TIGER datasets. Based on our experiments, we identify a BSP based partitioning that we call Min-Skew which consistently provides the most accurate selectivity estimates for spatial queries. The Min-Skew partitioning can be constructed efficiently, occupies very little space, and provides accurate selectivity estimates over a broad range of spatial queries.
机译:查询的选择性估计是关系数据库系统中的一个重要且良好的问题。在本文中,我们在地理信息系统的背景下检查选择性估计,该系统管理空间数据,如点,线,多线和多边形。特别是,我们专注于两维矩形数据的点和范围查询。我们提出了几种基于空间指数,直方图,二进制空间分区(BSP)的技术,以及空间偏斜的新颖概念。我们的技术将输入矩形仔细分区为子集并准确地近似每个分区。我们提供了一个详细的实验研究,比较了所提出的技术和最着名的采样和参数化技术。我们使用合成和现实生活虎数据集评估它们。基于我们的实验,我们确定了一种基于BSP的分区,我们呼叫最小偏斜,这一直为空间查询提供最准确的选择性估计。可以有效地构造最小偏斜的分区,占用非常小的空间,并在广泛的空间查询中提供准确的选择性估计。

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