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FPVI: A scalable method for discovering privacy vulnerabilities in microdata

机译:FPVI:一种可伸缩的方法,用于发现微数据中的隐私漏洞

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摘要

Governments are increasingly interested in making their data accessible through open data platforms to promote transparency and economic growth. At the same time, recent efforts towards personalized healthcare and smart transportation aim to analyze individuals' data, such as electronic medical records and user mobility patterns, to derive important insights. The implementation of a smart city largely depends on the ability to extract knowledge from person-specific data. This, however, may come at a cost to individuals' privacy. In this paper we propose FPVI, a fast algorithm for discovering privacy vulnerabilities in relational data. FPVI operates in a multi-threaded fashion to index and scan the data for vulnerabilities, while pruning the search space to boost performance. Our experimental evaluation shows that FPVI outperforms the state-of-the-art method and can analyze datasets of 11 million records and 20 attributes in less than 9 minutes.
机译:各国政府对通过开放数据平台访问其数据以提高透明度和促进经济增长的兴趣日益浓厚。同时,最近针对个性化医疗保健和智能交通的努力旨在分析个人数据,例如电子病历和用户移动性模式,以得出重要见解。智慧城市的实施很大程度上取决于从特定人的数据中提取知识的能力。但是,这可能会损害个人隐私。在本文中,我们提出了FPVI,这是一种用于发现关系数据中隐私漏洞的快速算法。 FPVI以多线程方式运行,以索引和扫描数据中的漏洞,同时修剪搜索空间以提高性能。我们的实验评估表明,FPVI优于最新方法,并且可以在不到9分钟的时间内分析1100万条记录和20个属性的数据集。

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