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Evaluation of Re-identification Risks in Data Anonymization Techniques Based on Population Uniqueness

机译:基于人口唯一性的数据匿名技术重新识别风险评估

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With the increasing appetite for publicly available personal data for various analytics and decision making, due care must be taken to preserve the privacy of data subjects before any disclosure of data. Though many data anonymization techniques are available, there is no holistic understanding of their risk of re-identification and the conditions under which they could be applied. Therefore, it is imperative to study the risk of re-identification of anonymization techniques across different types of datasets. In this paper, we assess the re-identification risk of four popular anonymization techniques against four different datasets. We use population uniqueness to evaluate the risk of re-identification. As per the analysis, k-anonymity shows the lowest re-identification risk for unbiased samples of the population datasets. Moreover, our findings also emphasize that the risk assessment methodology should depend on the chosen dataset. Furthermore, for the datasets with higher linkability, the risk of re-identification measured using the uniqueness is much lower than the real risk of re-identification.
机译:随着对各种分析和决策的公开个人数据的兴趣增加,必须小心保留在任何披露数据之前的数据主体的隐私。虽然有许多数据匿名化技术可用,但对其重新识别风险和可以应用的条件没有全面了解。因此,研究跨不同类型的数据集重新识别匿名化技术的风险。在本文中,我们评估了针对四个不同数据集的四个流行匿名化技术的重新识别风险。我们使用人口唯一性来评估重新识别的风险。根据分析,K-Anymonity显示了群体数据集的无偏见样本的最低重新识别风险。此外,我们的调查结果还强调风险评估方法应该取决于所选择的数据集。此外,对于具有较高核性的数据集,使用唯一性测量的重新识别的风险远远低于重新识别的真正风险。

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