有效的双向顺序依赖发现

Yifeng Jin, Lin Zhu, Zijing Tan
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引用次数: 11

摘要

双向顺序依赖关系表示属性列表之间的顺序关系。它们自然地为SQL查询中的order-by子句建模,并且在有关排序的查询优化中被证明是有效的。尽管它们很重要,但数据集上的顺序依赖关系通常是未知的,而且手工设计或发现的成本太高(如果不是不可能的话)。自动发现订单依赖关系的技术最近得到了研究。顺序依赖项发现很难很好地扩展,因为它本质上是属性数量m的阶乘和元组数量n的二次元。在本文中,我们采用了一种策略,将m的影响与n的影响解耦,并且仍然找到所有最小有效的双向顺序依赖。我们提出了精心设计的数据结构,大量的算法和优化,以有效地发现顺序依赖。通过对现实生活和合成数据集的广泛实验研究,我们验证了我们的方法在数量级上明显优于最先进的技术。
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Efficient Bidirectional Order Dependency Discovery
Bidirectional order dependencies state relationships of order between lists of attributes. They naturally model the order-by clauses in SQL queries, and are proved effective in query optimizations concerning sorting. Despite their importance, order dependencies on a dataset are typically unknown and are too costly, if not impossible, to design or discover manually. Techniques for automatic order dependency discovery are recently studied. It is challenging for order dependency discovery to scale well, since it is by nature factorial in the number m of attributes and quadratic in the number n of tuples. In this paper, we adopt a strategy that decouples the impact of m from that of n, and that still finds all minimal valid bidirectional order dependencies. We present carefully designed data structures, a host of algorithms and optimizations, for efficient order dependency discovery. With extensive experimental studies on both real-life and synthetic datasets, we verify our approach significantly outperforms state-of-the-art techniques, by orders of magnitude.
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