自适应窗口重复检测

Uwe Draisbach, Felix Naumann, Sascha Szott, Oliver Wonneberg
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引用次数: 113

摘要

重复检测的任务是分别识别数据集中表示相同现实世界实体的所有记录组。这项任务很困难,因为(i)表示可能略有不同,因此必须定义一些相似性度量来比较成对的记录;(ii)数据集可能有很大的容量,使得对所有记录进行成对比较不可行。为了解决第二个问题,许多算法建议对数据集进行分区,并只比较每个分区内的所有记录对。其中一种著名的方法是邻域排序方法(SNM),它根据某个键对数据进行排序,然后在数据上移动一个窗口,只比较出现在同一窗口内的记录。我们提出了重复计数策略(DCS)的SNM变体,它使用不同的窗口大小。它是基于这样的直觉,即可能存在高相似度的区域表明窗口大小较大,而低相似度的区域表明窗口大小较小。除了DCS的基本变体,我们还提出并彻底评估了一个名为DCS++的变体,该变体在效率方面优于原始SNM(相同的结果,较少的比较)。
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Adaptive Windows for Duplicate Detection
Duplicate detection is the task of identifying all groups of records within a data set that represent the same real-world entity, respectively. This task is difficult, because (i) representations might differ slightly, so some similarity measure must be defined to compare pairs of records and (ii) data sets might have a high volume making a pair-wise comparison of all records infeasible. To tackle the second problem, many algorithms have been suggested that partition the data set and compare all record pairs only within each partition. One well-known such approach is the Sorted Neighborhood Method (SNM), which sorts the data according to some key and then advances a window over the data comparing only records that appear within the same window. We propose with the Duplicate Count Strategy (DCS) a variation of SNM that uses a varying window size. It is based on the intuition that there might be regions of high similarity suggesting a larger window size and regions of lower similarity suggesting a smaller window size. Next to the basic variant of DCS, we also propose and thoroughly evaluate a variant called DCS++ which is provably better than the original SNM in terms of efficiency (same results with fewer comparisons).
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