结合缺失值的SRS数据匿名化保护隐私

Wen-Yang Lin, Kuang-Yung Hsu, Zih-Xun Shen
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引用次数: 3

摘要

自发报告系统(srs)是指用于收集药物不良事件(ade)自愿报告的系统,其中通常包含敏感的个人隐私信息。虽然许多学者提出了各种隐私保护模型,但都忽略了SRS数据的特点。我们之前已经针对SRS数据提出了一种可行的隐私模型和匿名化方法。但是,这种方法只适用于完整的数据,没有考虑到SRS数据中存在大量的缺失数据。本文提出了一种新的隐私模型Closed MS(k, θ*)-bounding和一种新的匿名化方法Closed- mpartitioning来处理存在缺失值的SRS数据。我们使用美国FDA的FAERS数据从信息丢失、隐私风险和数据效用方面评估我们提出的方法。结果表明,该方法在不牺牲数据质量和实用性的前提下,能够有效防止攻击者窃取个人隐私。
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Privacy-Preserving SRS Data Anonymization by Incorporating Missing Values
Spontaneous Reporting Systems (SRSs) refer to systems used to collect voluntary reporting of adverse drug events (ADEs), which usually contain sensitive personal privacy information. Although many scholars have proposed various privacy protection models, they overlooked characteristics of SRS data. We previously have proposed a feasible privacy model and anonymization method dedicate to SRS data. However, this method is only applicable to complete data, not considering the fact that SRS data contain a lot of missing data. In this paper, we propose a new privacy model Closed MS(k, θ*)-bounding and a new anonymization method, Closed-MSpartition, to process SRS data with missing values. We used US FDA's FAERS data to evaluate our proposed method from the aspects of information loss, privacy risk, and data utility. The results show that our proposed new method can effectively prevent attackers from learning personal privacy without sacrificing data quality and utility.
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