C-Cubing:基于聚合检查的封闭立方体的高效计算

Dong Xin, Zheng Shao, Jiawei Han, Hongyan Liu
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引用次数: 54

摘要

众所周知,数据立方经常产生巨大的输出。致力于这个问题的两个流行的努力是:(1)冰山立方体,其中只保留有效的单元;(2)封闭立方体,其中一组保留上卷/下钻语义的单元被无损压缩到一个单元。由于闭立方的可用性和重要性,它的高效计算仍然值得深入研究。在本文中,我们提出了一种新的度量,称为封闭性,用于有效的封闭数据立方。我们证明了封闭性是一个代数度量,可以有效地和增量地计算。基于封闭性度量,我们开发了一种基于聚合的方法,称为C-Cubing(即Closed-Cubing),并将其集成到两个成功的冰山立方算法中:MM-Cubing和Star-Cubing。我们的性能研究表明,C-Cubing的运行速度几乎比以前的方法快一个数量级。我们进一步研究了c -立方算法的性能如何随数据集的性质而变化。
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C-Cubing: Efficient Computation of Closed Cubes by Aggregation-Based Checking
It is well recognized that data cubing often produces huge outputs. Two popular efforts devoted to this problem are (1) iceberg cube, where only significant cells are kept, and (2) closed cube, where a group of cells which preserve roll-up/drill-down semantics are losslessly compressed to one cell. Due to its usability and importance, efficient computation of closed cubes still warrants a thorough study. In this paper, we propose a new measure, called closedness, for efficient closed data cubing. We show that closedness is an algebraic measure and can be computed efficiently and incrementally. Based on closedness measure, we develop an an aggregation-based approach, called C-Cubing (i.e., Closed-Cubing), and integrate it into two successful iceberg cubing algorithms: MM-Cubing and Star-Cubing. Our performance study shows that C-Cubing runs almost one order of magnitude faster than the previous approaches. We further study how the performance of the alternative algorithms of C-Cubing varies w.r.t the properties of the data sets.
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