SMSPPRL: A Similarity Matching Strategy for Privacy Preserving Record Linkage

V. Shelake, N. Shekokar
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Abstract

Now-a-days, huge amount of personal and sensitive data of individuals resides across different data sources that refer to the same entity. Thus, it is crucial and necessary to detect and link duplicate records from multiple data sets in secure manner referred to as privacy preserving record linkage (PPRL). The PPRL enables data integration, analysis and research activities for business benefits. Since real world data exhibits its dirty and erroneous representations, achieving linkage accuracy is a prominent factor for PPRL techniques. Hence, approximate matching techniques play a crucial role for achieving linkage accuracy in PPRL applications. In this paper, different suitable attribute combinations for PPRL are identified. This paper introduces a similarity matching strategy for privacy preserving record linkage named as SMSPPRL for achieving increased linkage accuracy. Our SMSPPRL technique performs better than existing PPRL techniques Basic Bloom, hardened balanced Bloom filter in terms of linkage accuracy.
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SMSPPRL:一种隐私保护记录链接的相似度匹配策略
如今,大量的个人和敏感数据驻留在引用同一实体的不同数据源中。因此,以一种被称为隐私保护记录链接(PPRL)的安全方式检测和链接来自多个数据集的重复记录是至关重要和必要的。PPRL支持数据集成、分析和研究活动,以获得商业利益。由于真实世界的数据显示出其肮脏和错误的表示,因此实现链接准确性是PPRL技术的一个重要因素。因此,在PPRL应用中,近似匹配技术对于实现联动精度起着至关重要的作用。本文确定了适合PPRL的不同属性组合。为了提高链接精度,提出了一种用于隐私保护记录链接的相似度匹配策略SMSPPRL。我们的SMSPPRL技术在链接精度方面优于现有的PPRL技术(Basic Bloom, hardened balanced Bloom filter)。
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