Adaptive Blocking: Learning to Scale Up Record Linkage

M. Bilenko, B. Kamath, R. Mooney
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引用次数: 273

Abstract

Many data mining tasks require computing similarity between pairs of objects. Pairwise similarity computations are particularly important in record linkage systems, as well as in clustering and schema mapping algorithms. Because the number of object pairs grows quadratically with the size of the dataset, computing similarity between all pairs is impractical and becomes prohibitive for large datasets and complex similarity functions. Blocking methods alleviate this problem by efficiently selecting approximately similar object pairs for subsequent distance computations, leaving out the remaining pairs as dissimilar. Previously proposed blocking methods require manually constructing an index- based similarity function or selecting a set of predicates, followed by hand-tuning of parameters. In this paper, we introduce an adaptive framework for automatically learning blocking functions that are efficient and accurate. We describe two predicate-based formulations of learnable blocking functions and provide learning algorithms for training them. The effectiveness of the proposed techniques is demonstrated on real and simulated datasets, on which they prove to be more accurate than non-adaptive blocking methods.
自适应阻塞:学习扩展记录链接
许多数据挖掘任务需要计算对象对之间的相似性。对相似度计算在记录链接系统以及聚类和模式映射算法中尤为重要。由于对象对的数量随着数据集的大小呈二次增长,计算所有对象对之间的相似性是不切实际的,并且对于大型数据集和复杂的相似性函数来说是不切实际的。阻塞方法通过有效地选择近似相似的对象对进行后续距离计算,而忽略其余不相似的对象对,从而缓解了这一问题。先前提出的阻塞方法需要手动构建基于索引的相似函数或选择一组谓词,然后手动调整参数。本文介绍了一种高效、准确的自动学习块函数的自适应框架。我们描述了两种基于谓词的可学习块函数公式,并提供了训练它们的学习算法。在真实和模拟数据集上证明了所提出技术的有效性,证明它们比非自适应阻塞方法更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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