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Efficient evaluation of partially-dimensional range queries in large OLAP datasets

机译:大型OLAP数据集中的部分维范围查询的有效评估

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摘要

In light of the increasing requirement for processing multidimensional queries on OLAP (relational) data, the database community has focused on the queries (especially range queries) on the large OLAP datasets from the view of multidimensional data. It is well-known that multidimensional indices are helpful to improve the performance of such queries. However, we found that much information irrelevant to queries also has to be read from disk if the existing multidimensional indices are used with OLAP data, which greatly degrade the search performance. This problem comes from particularity on the actual queries exerted on OLAP data. That is, in many OLAP applications, the query conditions probably are only with partial dimensions (not all) of the whole index space. Such range queries are called partially-dimensional (PD) range queries in this study. Based on R*-tree, we propose a new index structure, called AR*-tree, to counter the actual queries on OLAP data. The results of both mathematical analysis and many experiments with different datasets indicate that the AR*-tree can clearly improve the performance of PD range queries, esp. for large OLAP datasets.
机译:鉴于对OLAP(关系)数据处理多维查询的需求不断增长,数据库社区已从多维数据的角度着眼于大型OLAP数据集的查询(尤其是范围查询)。众所周知,多维索引有助于提高此类查询的性能。但是,我们发现,如果将现有的多维索引与OLAP数据一起使用,则还必须从磁盘读取许多与查询无关的信息,这将大大降低搜索性能。此问题来自对OLAP数据施加的实际查询的特殊性。也就是说,在许多OLAP应用程序中,查询条件可能只包含整个索引空间的部分维度(不是全部)。在本研究中,此类范围查询称为部分维(PD)范围查询。基于R * -tree,我们提出了一个新的索引结构,称为AR * -tree,以应对对OLAP数据的实际查询。数学分析和使用不同数据集进行的许多实验的结果均表明,AR *树可以明显改善PD范围查询的性能,尤其是。用于大型OLAP数据集。

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