Leveraging Approximate Constraints for Localized Data Error Detection

Mohan Zhang, O. Schulte, Yudong Luo
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Abstract

Error detection is key for data quality management. AI techniques can leverage user domain knowledge to identifying sets of erroneous records that conflict with domain knowledge. To represent a wide range of user domain knowledge, several recent papers have developed and utilized soft approximate constraints (ACs) that a data relation is expected to satisfy only to a certain degree, rather than completely. We introduce error localization, a new AI-based technique for enhancing error detection with ACs. Our starting observation is that approximate constraints are context-sensitive: the degree to which they are satisfied depends on the sub-population being considered. An error region is a subset of the data that violates an AC to a higher degree than the data as a whole, and is therefore more likely to contain erroneous records. For example, an error region may contain the set of records from before a certain year, or from a certain location. We describe an efficient optimization algorithm for error localization: identifying distinct error regions that violate a given AC the most, based on a recursive tree partitioning scheme. The tree representation describes different error regions in terms of data attributes that are easily interpreted by users (e.g., all records before 2003). This helps to explain to the user why some records were identified as likely errors. After identifying error regions, we apply error detection methods to each error region separately, rather than to the dataset as a whole. Our empirical evaluation, based on four datasets containing both real world and synthetic errors, shows that error localization increases both accuracy and speed of error detection based on ACs.
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利用近似约束进行局部数据错误检测
错误检测是数据质量管理的关键。人工智能技术可以利用用户领域知识来识别与领域知识相冲突的错误记录集。为了表示广泛的用户领域知识,最近的一些论文开发并利用了软近似约束(ACs),数据关系只期望在一定程度上满足,而不是完全满足。我们介绍了一种新的基于人工智能的错误定位技术,用于增强ACs的错误检测。我们最初的观察是,近似约束是上下文敏感的:它们被满足的程度取决于所考虑的子群体。错误区域是数据的一个子集,它违反AC的程度高于整个数据,因此更有可能包含错误记录。例如,错误区域可能包含特定年份之前或特定位置的一组记录。我们描述了一种有效的错误定位优化算法:基于递归树划分方案识别最违反给定AC的不同错误区域。树表示根据用户容易解释的数据属性描述不同的错误区域(例如,2003年之前的所有记录)。这有助于向用户解释为什么有些记录被识别为可能的错误。在识别错误区域后,我们将错误检测方法分别应用于每个错误区域,而不是将数据集作为一个整体。我们基于包含真实世界和合成误差的四个数据集的经验评估表明,错误定位提高了基于ACs的错误检测的准确性和速度。
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