CSV文件中的聚合检测

Lan Jiang, Gerardo Vitagliano, Mazhar Hameed, Felix Naumann
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引用次数: 0

摘要

聚合是一个数字和一组数字之间的算术关系。原始CSV文件中的表通常包括各种类型的聚合,以汇总其中的数据。识别表中的聚合有助于理解文件结构、检测数据错误和规范表。然而,在CSV文件中识别聚合并不简单,因为这些文件通常以特别的方式组织信息,聚合出现在任意位置并显示舍入错误。我们提出了三阶段方法AggreCol来识别五种类型的聚合:和、差、平均、分割和相对变化。第一阶段分别检测每种类型的聚合。第二阶段使用一组修剪规则来删除虚假候选。最后一个阶段使用规则来允许单个检测器跳过文件的特定部分并检索更多聚合。我们用两个手动注释的数据集评估了我们的方法,结果表明AggreCol能够分别对91.1%和86.3%的文件达到0.95的精度和召回率。我们在一个未知的测试数据集上得到了类似的结果,证明了我们提出的技术的泛化性。
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Aggregation Detection in CSV Files
Aggregations are an arithmetic relationship between a single number and a set of numbers. Tables in raw CSV files often include various types of aggregations to summarize data therein. Identifying aggregations in tables can help understand file structures, detect data errors, and normalize tables. However, recognizing aggregations in CSV files is not trivial, as these files often organize information in an ad-hoc manner with aggregations appearing in arbitrary positions and displaying rounding errors. We propose the three-stage approach AggreCol to recognize aggregations of five types: sum, difference, average, division, and relative change. The first stage detects aggregations of each type individually. The second stage uses a set of pruning rules to remove spurious candidates. The last stage employs rules to allow individual detectors to skip specific parts of the file and retrieve more aggregations. We evaluated our approach with two manually annotated datasets, showing that AggreCol is capable of achieving 0.95 precision and recall for 91.1% and 86.3% of the files, respectively. We obtained similar results on an unseen test dataset, proving the generalizability of our proposed techniques.
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