Extracting Partition Statistics from Semistructured Data

John N. Wilson, R. Gourlay, Robert Japp, M. Neumüller
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引用次数: 2

Abstract

The effective grouping, or partitioning, of semistructured data is of fundamental importance when providing support for queries. Partitions allow items within the data set that share common structural properties to be identified efficiently. This allows queries that make use of these properties, such as branching path expressions, to be accelerated. Here, we evaluate the effectiveness of several partitioning techniques by establishing the number of partitions that each scheme can identify over a given data set. In particular, we explore the use of parameterised indexes, based upon the notion of forward and backward bisimilarity, as a means of partitioning semistructured data; demonstrating that even restricted instances of such indexes can be used to identify the majority of relevant partitions in the data
从半结构化数据中提取分区统计信息
在为查询提供支持时,对半结构化数据进行有效分组或分区是非常重要的。分区允许有效地识别数据集中共享公共结构属性的项。这允许使用这些属性(如分支路径表达式)的查询得到加速。在这里,我们通过建立每个方案在给定数据集上可以识别的分区数量来评估几种分区技术的有效性。特别地,我们探索了参数化索引的使用,基于向前和向后双相似性的概念,作为半结构化数据分区的一种手段;说明即使是这些索引的受限实例也可以用来标识数据中的大多数相关分区
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