SUBSKY: Efficient Computation of Skylines in Subspaces

Yufei Tao, Xiaokui Xiao, J. Pei
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引用次数: 215

Abstract

Given a set of multi-dimensional points, the skyline contains the best points according to any preference function that is monotone on all axes. In practice, applications that require skyline analysis usually provide numerous candidate attributes, and various users depending on their interests may issue queries regarding different (small) subsets of the dimensions. Formally, given a relation with a large number (e.g.,ge 10) of attributes, a query aims at finding the skyline in an arbitrary subspace with a low dimensionality (e.g., 2). The existing algorithms do not support subspace skyline retrieval efficiently because they (i) require scanning the entire database at least once, or (ii) are optimized for one particular subspace but incur significant overhead for other subspaces. In this paper, we propose a technique SUBSKY which settles the problem using a single B-tree, and can be implemented in any relational database. The core of SUBSKY is a transformation that converts multi-dimensional data to 1D values, and enables several effective pruning heuristics. Extensive experiments with real data confirm that SUBSKY outperforms alternative approaches significantly in both efficiency and scalability.
SUBSKY:子空间中天际线的高效计算
给定一组多维点,天际线包含根据在所有轴上单调的任何偏好函数的最佳点。在实践中,需要天际线分析的应用程序通常提供许多候选属性,不同的用户根据他们的兴趣可能会对维度的不同(小)子集发出查询。在形式上,给定一个具有大量属性(例如,10)的关系,查询的目标是在任意低维子空间(例如,2)中找到天际线。现有算法不支持有效的子空间天际线检索,因为它们(i)需要至少扫描整个数据库一次,或者(ii)针对特定子空间进行优化,但会导致其他子空间的显著开销。在本文中,我们提出了一种SUBSKY技术,它使用单个b树解决了这个问题,并且可以在任何关系数据库中实现。SUBSKY的核心是将多维数据转换为一维值的转换,并支持几种有效的剪枝启发式方法。大量的真实数据实验证实,SUBSKY在效率和可扩展性方面都明显优于其他方法。
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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