Don't be SCAREd: use SCalable Automatic REpairing with maximal likelihood and bounded changes

M. Yakout, Laure Berti-Équille, A. Elmagarmid
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引用次数: 144

Abstract

Various computational procedures or constraint-based methods for data repairing have been proposed over the last decades to identify errors and, when possible, correct them. However, these approaches have several limitations including the scalability and quality of the values to be used in replacement of the errors. In this paper, we propose a new data repairing approach that is based on maximizing the likelihood of replacement data given the data distribution, which can be modeled using statistical machine learning techniques. This is a novel approach combining machine learning and likelihood methods for cleaning dirty databases by value modification. We develop a quality measure of the repairing updates based on the likelihood benefit and the amount of changes applied to the database. We propose SCARE (SCalable Automatic REpairing), a systematic scalable framework that follows our approach. SCARE relies on a robust mechanism for horizontal data partitioning and a combination of machine learning techniques to predict the set of possible updates. Due to data partitioning, several updates can be predicted for a single record based on local views on each data partition. Therefore, we propose a mechanism to combine the local predictions and obtain accurate final predictions. Finally, we experimentally demonstrate the effectiveness, efficiency, and scalability of our approach on real-world datasets in comparison to recent data cleaning approaches.
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不要害怕:使用具有最大可能性和有限更改的可伸缩自动修复
在过去的几十年里,已经提出了各种计算程序或基于约束的数据修复方法来识别错误,并在可能的情况下纠正它们。然而,这些方法有一些限制,包括可伸缩性和用于替换错误的值的质量。在本文中,我们提出了一种新的数据修复方法,该方法基于给定数据分布的替换数据的可能性最大化,可以使用统计机器学习技术进行建模。这是一种结合机器学习和似然方法的新方法,通过值修改来清理脏数据库。我们根据可能的收益和应用于数据库的更改量开发修复更新的质量度量。我们提出了SCARE(可伸缩自动修复),这是一个遵循我们方法的系统可伸缩框架。SCARE依靠强大的水平数据分区机制和机器学习技术的组合来预测可能的更新集。由于存在数据分区,可以基于每个数据分区上的本地视图预测单个记录的多个更新。因此,我们提出了一种结合局部预测并获得准确的最终预测的机制。最后,我们通过实验证明了与最近的数据清理方法相比,我们的方法在真实数据集上的有效性、效率和可扩展性。
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