Adaptive processing of top-k queries in XML

A. Marian, S. Amer-Yahia, Nick Koudas, D. Srivastava
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引用次数: 102

Abstract

The ability to compute top-k matches to XML queries is gaining importance due to the increasing number of large XML repositories. The efficiency of top-k query evaluation relies on using scores to prune irrelevant answers as early as possible in the evaluation process. In this context, evaluating the same query plan for all answers might be too rigid because, at any time in the evaluation, answers have gone through the same number and sequence of operations, which limits the speed at which scores grow. Therefore, adaptive query processing that permits different plans for different partial matches and maximizes the best scores is more appropriate. In this paper, we propose an architecture and adaptive algorithms for efficiently computing top-k matches to XML queries. Our techniques can be used to evaluate both exact and approximate matches where approximation is defined by relaxing XPath axes. In order to compute the scores of query answers, we extend the traditional tf*idf measure to account for document structure. We conduct extensive experiments on a variety of benchmark data and queries, and demonstrate the usefulness of the adaptive approach for computing top-k queries in XML.
XML中top-k查询的自适应处理
由于大型XML存储库的数量不断增加,计算top-k匹配到XML查询的能力变得越来越重要。top-k查询评估的效率依赖于在评估过程中尽早使用分数来修剪不相关的答案。在这种情况下,对所有答案评估相同的查询计划可能过于死板,因为在评估的任何时候,答案都经历了相同数量和顺序的操作,这限制了分数增长的速度。因此,允许针对不同部分匹配的不同计划并最大化最佳分数的自适应查询处理更为合适。本文提出了一种高效计算top-k匹配的体系结构和自适应算法。我们的技术可用于评估精确匹配和近似匹配,其中近似是通过放松XPath轴来定义的。为了计算查询答案的分数,我们扩展了传统的tf*idf度量来考虑文档结构。我们对各种基准数据和查询进行了广泛的实验,并演示了自适应方法在XML中计算top-k查询的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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