查询驱动的功能依赖冲突修复

Stella Giannakopoulou, M. Karpathiotakis, A. Ailamaki
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引用次数: 3

摘要

数据清理是一个耗时的过程,取决于用户执行的数据分析。现有解决方案将数据清理视为在分析开始之前进行的单独脱机过程。在分析之前应用数据清理假定对不一致性和查询工作负载有先验知识,因此需要努力理解和清理对分析来说不必要的数据。我们提出了一种方法,根据用户执行的探索性分析,按需执行功能依赖违反的概率修复。我们介绍Daisy,这是一个通过放松查询结果将数据清理无缝集成到分析中的系统。Daisy通过将清理操作符编织到查询计划中,对脏数据执行分析性查询工作负载。我们的评估表明,Daisy能够适应工作负载,并且在合成工作负载和实际工作负载上都优于传统的离线清理。
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Query-driven Repair of Functional Dependency Violations
Data cleaning is a time-consuming process that depends on the data analysis that users perform. Existing solutions treat data cleaning as a separate offline process that takes place before analysis begins. Applying data cleaning before analysis assumes a priori knowledge of the inconsistencies and the query workload, thereby requiring effort on understanding and cleaning the data that is unnecessary for the analysis.We propose an approach that performs probabilistic repair of functional dependency violations on-demand, driven by the exploratory analysis that users perform. We introduce Daisy, a system that seamlessly integrates data cleaning into the analysis by relaxing query results. Daisy executes analytical query-workloads over dirty data by weaving cleaning operators into the query plan. Our evaluation shows that Daisy adapts to the workload and outperforms traditional offline cleaning on both synthetic and real-world workloads.
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