基于核的天际线基数估计

Zhenjie Zhang, Y. Yang, Ruichu Cai, D. Papadias, A. Tung
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引用次数: 57

摘要

d维数据集的天际线由所有不受其他点支配的点组成。将天际线算子整合到实际的数据库系统中,需要一个高效的基数估计模块。然而,关于这个问题的现有理论工作仅限于所有d维彼此独立的情况,这很少适用于实际数据集。最先进的Log Sampling (LS)技术只是将独立维度的理论结果应用于非独立数据,有时会导致较大的估计误差。为了解决这个问题,我们提出了一种新的基于核(KB)的方法,该方法使用非参数方法近似天际线基数。对各种真实数据集的大量实验表明,即使在LS失败的情况下,KB也能达到很高的准确性。同时,尽管KB具有数值性质,但其效率与LS相当。此外,我们将LS和KB扩展到k-dominant skyline,这是高维数据中常用的替代传统skyline的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel-based skyline cardinality estimation
The skyline of a d-dimensional dataset consists of all points not dominated by others. The incorporation of the skyline operator into practical database systems necessitates an efficient and effective cardinality estimation module. However, existing theoretical work on this problem is limited to the case where all d dimensions are independent of each other, which rarely holds for real datasets. The state of the art Log Sampling (LS) technique simply applies theoretical results for independent dimensions to non-independent data anyway, sometimes leading to large estimation errors. To solve this problem, we propose a novel Kernel-Based (KB) approach that approximates the skyline cardinality with nonparametric methods. Extensive experiments with various real datasets demonstrate that KB achieves high accuracy, even in cases where LS fails. At the same time, despite its numerical nature, the efficiency of KB is comparable to that of LS. Furthermore, we extend both LS and KB to the k-dominant skyline, which is commonly used instead of the conventional skyline for high-dimensional data.
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