数据库对加权匹配连接的支持

A. Kini, J. Naughton
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引用次数: 2

摘要

随着关系数据库管理系统被应用于科学数据管理等非传统领域,越来越需要支持与传统RDBMS应用程序不同的语义查询。DBMS社区目前正在探索的两个有趣的想法是对查询结果进行排序(例如,top-k计算),以及最近的“匹配连接”。本文将这两种思想结合起来,研究了加权匹配连接,其中(a)类匹配连接,每个元组最多与一个匹配元组连接;(b)类top-k连接,系统试图提供一组使权重函数最大化的答案元组。我们探索了评估加权匹配连接的精确和近似策略。使用PostgreSQL中的原型实现,我们探索了这些策略的性能特征。我们的结果表明,基于DBMS优化的方法(提供一个操作符的几个实现,然后在运行时选择一个合适的实现)在计算加权匹配连接时很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Database Support for Weighted Match Joins
As relational database management systems are applied to non-traditional domains such as scientific data management, there is an increasing need to support queries with semantics that differ from those appropriate for traditional RDBMS applications. Two interesting ideas currently being explored in the DBMS community are ranking query results (e.g., top-k computations) and, more recently, "match joins." In this paper we combine these two ideas and study weighted match joins, in which (a) like match joins, each tuple joins with at most one matching tuple, and (b) like top-k joins, the system attempts to provide a set of answer tuples that maximizes a weight function. We explore exact and approximate strategies for evaluating weighted match joins. Using a prototype implementation in PostgreSQL, we explore the performance characteristics of these strategies. Our results suggest that the DBMS optimization-based approach of providing several implementations of an operator and then choosing an appropriate one at run time can be useful in computing weighted match joins.
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