Multi-dimensional histograms with tight bounds for the error

被引:0
|
作者
Baltrunas, Linas
Mazeika, Arturas
Bohlen, Michael
机构
来源
10TH INTERNATIONAL DATABASE ENGINEERING AND APPLICATIONS SYMPOSIUM, PROCEEDINGS | 2006年
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中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Histograms are being used as non-parametric selectivity estimators for one-dimensional data. For highdimensional data it is common to either compute one-dimensional histograms for each attribute or to compute a multi-dimensional equi-width histogram for a set of attributes. This either yields small low-quality or large high-quality histograms. In this paper we introduce HIRED (HIgh-dimensional histograms with dimensionality REDuction): small high-quality histograms for multi-dimensional data. H I RED histograms are adaptive, and they are based on the shape error and directional splits. The shape error permits a precise control of the estimation error of the histogram and, together with directional splits, yields a memory complexity that does not depend on the number of uniform attributes in the dataset. We provide extensive experimental results with synthetic and real world datasets. The experiments confirm that our method is as precise as state-of-the-art techniques and uses orders of magnitude less memory.
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页码:105 / 112
页数:8
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