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A Re-Identification Risk-Based Anonymization Framework for Data Analytics Platforms

机译:用于数据分析平台的基于重新识别风险的匿名框架

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Preserving individual privacy is one of the major issues in the context of Big Data, since handling huge volumes of data may contribute to the disclosure of sensitive or personally identifiable information. In fact, even when data is anonymized there is a risk of re-identification through privacy attacks. This paper presents a re-identification risk-based anonymization framework for big data analytics platforms. This framework is based on anonymization policies and allows applying anonymization techniques and models in two stages: during the ETL process and before exporting the statistical results of data analytics. This second stage evaluates the data re-identification risk and increases the anonymity level if it is necessary to reduce this risk. Although generic, the implementation of the framework reported in this work was integrated into Ophidia as a case study. Privacy attacks were performed to check the effectiveness of the re-identification process. Results are promising, showing a low probability of re-identification in two different scenarios.
机译:在大数据方面,保护个人隐私是主要问题之一,因为处理大量数据可能会导致敏感或个人身份信息的泄露。实际上,即使匿名了数据,也存在通过隐私攻击重新识别的风险。本文提出了一种用于大数据分析平台的基于重新识别风险的匿名框架。该框架基于匿名化策略,并允许在两个阶段中应用匿名化技术和模型:在ETL过程中以及导出数据分析的统计结果之前。第二阶段评估数据重新识别风险,如果有必要降低这种风险,则增加匿名级别。尽管是通用的,但该案例中报告的框架的实施已集成到Ophidia中。进行了隐私攻击,以检查重新识别过程的有效性。结果令人鼓舞,表明在两种不同情况下重新识别的可能性很小。

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