MERLIN -- A Tool for Multi-party Privacy-Preserving Record Linkage

Thilina Ranbaduge, Dinusha Vatsalan, P. Christen
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引用次数: 8

Abstract

Many organizations, including businesses, government agencies and research organizations, are collecting vast amounts of data, which are stored, processed and analyzed to mine interesting patterns and knowledge to support efficient and quality decision making. In order to improve data quality and to facilitate further analysis, many application domains require information from multiple sources to be integrated and combined. The process of matching and aggregating records that relate to the same entities from different data sources without compromising their privacy is known as 'privacy-preserving record linkage' (PPRL), 'blind data linkage' or 'private record linkage'. In this paper we present MERLIN, an online tool that demonstrates various PPRL methods in a multi-party context. In this demonstration we show different private multi-party blocking and matching techniques, and illustrate the usability of MERLIN by presenting quality and performance measures of various PPRL methods. We believe MERLIN will help practitioners and researchers to better understand the pipeline of the PPRL process, to compare different multi-party PPRL techniques, and to determine the best technique to use for their needs.
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MERLIN——多方隐私保护记录链接的工具
包括企业、政府机构和研究机构在内的许多组织都在收集大量数据,对这些数据进行存储、处理和分析,以挖掘有趣的模式和知识,从而支持高效、高质量的决策制定。为了提高数据质量并促进进一步分析,许多应用程序领域需要集成和组合来自多个源的信息。匹配和聚合来自不同数据源的与同一实体相关的记录而不损害其隐私的过程被称为“隐私保护记录链接”(PPRL)、“盲数据链接”或“私人记录链接”。在本文中,我们介绍了MERLIN,这是一个在线工具,它在多方环境中演示了各种PPRL方法。在这个演示中,我们展示了不同的私有多方阻塞和匹配技术,并通过展示各种PPRL方法的质量和性能度量来说明MERLIN的可用性。我们相信MERLIN将帮助从业者和研究人员更好地理解PPRL过程的管道,比较不同的多方PPRL技术,并确定最适合他们需要的技术。
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