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Learning Constraints in Spreadsheets and Tabular Data

机译:电子表格和表格数据中的学习约束

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摘要

Spreadsheets, comma separated value files and other tabular data representations are in wide use today. However, writing, maintaining and identifying good formulas for tabular data and spreadsheets can be time-consuming and error-prone. We investigate the automatic learning of constraints (formulas and relations) in raw tabular data in an unsupervised way. We represent common spreadsheet formulas and relations through predicates and expressions whose arguments must satisfy the inherent properties of the constraint. The challenge is to automatically infer the set of constraints present in the data, without labeled examples or user feedback. We propose a two-stage generate and test method where the first stage uses constraint solving techniques to efficiently reduce the number of candidates, based on the predicate signatures. Our approach takes inspiration from inductive logic programming, constraint learning and constraint satisfaction. We show that we are able to accurately discover constraints in spreadsheets from various sources.
机译:如今,电子表格,逗号分隔的值文件和其他表格数据表示形式得到了广泛使用。但是,为表格数据和电子表格编写,维护和标识良好的公式可能既耗时又容易出错。我们以无人监督的方式调查了原始表格数据中约束(公式和关系)的自动学习。我们通过谓词和表达式来表示常见的电子表格公式和关系,这些谓词和表达式的参数必须满足约束的固有属性。面临的挑战是自动推断数据中存在的约束集,而无需标记示例或用户反馈。我们提出了一个两阶段的生成和测试方法,其中第一阶段使用约束解决技术来基于谓词签名有效地减少候选者的数量。我们的方法从归纳逻辑编程,约束学习和约束满足中获得启发。我们证明了我们能够从各种来源准确地发现电子表格中的约束。

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