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Computing Iceberg Quotient Cubes with Bounding

机译:用边界计算冰山商量立方体

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摘要

In complex data warehouse applications, high dimensional data cubes can become very big. The quotient cube is attractive in that it not only summarizes the original cube but also it keeps the roll-up and drill-down semantics between cube cells. In this paper we study the problem of semantic summarization of iceberg cubes, which comprises only cells that satisfy given aggregation constraints. We propose a novel technique for identifying groups of cells based on bounding aggregates and an efficient algorithm for computing iceberg quotient cubes for monotone functions. Our experiments show that iceberg quotient cubes can reduce data cube sizes and our iceberg quotient cubing algorithm can be over 10-fold more efficient than the current approach.
机译:在复杂的数据仓库应用中,高维数据多维数据集会变得非常大。商立方体是有吸引力的,因为它不仅总结了原始的立方体,而且它还可以在立方体细胞之间保持卷起和深入的语义。在本文中,我们研究了冰山立方体的语义概括问题,该问题仅包括满足给定聚合约束的细胞。我们提出了一种新颖的技术,用于识别基于边界聚集体的细胞组和用于计算单调函数的冰山商立方体的有效算法。我们的实验表明,冰山商立方体可以减少数据立方体尺寸,我们的冰山商立方算法可以比当前方法更有效地超过10倍。

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