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Strategies for complex data cube queries

机译:复杂数据多维数据集查询的策略

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摘要

This paper proposes a computation method for holistic multi-feature cube (MF-Cube) queries based on the characteristics of MF-Cubes. Three simple yet efficient strategies are designed to optimize the dependent complex aggregate at multiple granularities for a complex data-mining query within data cubes. One strategy is the computation of Holistic MF-Cube queries using the PDAP (Part Distributive Aggregate Property). More efficiency is gained by another strategy, that of dynamic subset data selection (the iceberg query technique), which reduces the size of the materialized data cubes. To extend this efficiency further, the second approach may adopt the chunk-based caching technique that reuses the output of previous queries. By combining these three strategies, we design an algorithm called the PDIC (Part Distributive Iceberg Chunk). We experimentally evaluate this algorithm using synthetic and real-world datasets and demonstrate that our approach delivers up to approximately twice the performance efficiency of traditional computation methods.
机译:提出了一种基于MF-Cubes特征的整体多特征立方体查询算法。设计了三种简单而有效的策略,以便针对数据多维数据集中的复杂数据挖掘查询以多种粒度优化依赖的复杂聚合。一种策略是使用PDAP(部分分布聚合属性)计算整体MF多维数据集查询。通过动态子集数据选择(冰山查询技术)的另一种策略可以获得更高的效率,该策略可以减少物化数据立方体的大小。为了进一步扩展此效率,第二种方法可以采用基于块的缓存技术,该技术可重用先前查询的输出。通过结合这三种策略,我们设计了一种称为PDIC(部分分布式冰山块)的算法。我们使用合成的和真实的数据集实验性地评估了该算法,并证明了我们的方法可提供大约两倍于传统计算方法的性能效率。

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