A storage scheme for multidimensional data alleviating dimension dependency

Teppei Shimada, T. Tsuji, K. Higuchi
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引用次数: 20

Abstract

Multidimensional arrays storing multidimensional data in MOLAP are usually very sparse. They also suffer from the problem that the time consumed in sequential access to array elements heavily depends on the dimension along which the elements are accessed. This problem of ldquodimension dependencyrdquo would be alleviated by dividing the whole array into the set of smaller hypercube shaped subarrays called ldquochunksrdquo. But the chunks are also sparse and should be compressed. However, further dimension dependency in accessing array elements would be caused, unless these compressed chunks are arranged judiciously in the page buffer. The difference among the dimension cardinalities could also cause dimension dependency; slice operation along a dimension of large cardinality tends to consume much time. We will alleviate these two kinds of dimension dependency by introducing the notion of an ldquoextended chunkrdquo. Extended chunks can adapt flexibly to the general situation where data densities in chunks are low and are not uniformly distributed. Employing extended chunks, we will propose some secondary storage schemes for a multidimensional array using a space-filling curve such as Z-curve. The evaluation result shows that the proposed storage schemes exhibit good performance while alleviating the dimension dependency.
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一种多维数据存储方案,减轻了维度依赖性
在MOLAP中存储多维数据的多维数组通常是非常稀疏的。它们还存在这样一个问题,即顺序访问数组元素所消耗的时间在很大程度上取决于访问元素的维度。通过将整个数组划分为称为ldquochunksrdquo的更小的超立方体形状的子数组集,可以缓解ldquodimension依赖的问题。但是这些块也是稀疏的,应该被压缩。但是,在访问数组元素时将导致进一步的维度依赖,除非这些压缩块在页面缓冲区中被合理地安排。维度基数之间的差异也可能导致维度依赖;沿着基数较大的维度进行切片操作往往会消耗大量时间。我们将通过引入ldquoextended chunkrdquo的概念来减轻这两种维度依赖。扩展块可以灵活地适应块中数据密度低且分布不均匀的情况。采用扩展块,我们将使用空间填充曲线(如z曲线)为多维数组提出一些二级存储方案。评价结果表明,所提出的存储方案在降低维度依赖性的同时具有良好的性能。
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