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An efficient privacy-preserving data publishing in health care records with multiple sensitive attributes

机译:具有多个敏感属性的医疗保健记录中的高效保护数据

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Emerging advanced technologies in the e-health sector have improved the industry, helping to invent new medicine, reduced cost, better-quality consultation, and treatment. The improvements have originated from the patient record analysis that is shared between the health care provider and researchers. Due to this collaboration, there is an emerging security and privacy requirement in the health care sector. Privacy-preserved data publishing plays a significant role in preventing the disclosure of individual identity. Many privacy-preserving models have been proposed earlier for data publishing. However, they still suffer from few drawbacks i) cannot be applied on 1: M dataset ii) no trade-off between privacy and utility. To satisfy the multi-record privacy and trade-off between classification utility and privacy, we proposed Quasi-identifier Bucket-Individual Multi-Sensitive Attribute Bucket (QIAB-IMSB) algorithm. The main focus of our work is to anonymize the multi-valued record of an individual. The initial phase of our work is to merge the multi-record of an individual. Next, we implement vertical partitioning and apply k-anonymity for quasi-identifier bucket (QIAB) and (k, l) - diversity for individual multi-sensitive attribute bucket (IMSB). Our proposed approach mainly focuses on preventing the sensitive linking attack by implementing hierarchical generalization taxonomy. Our experimental results proved that there is an improved privacy and classification utility in privacy-preserving data publishing of health care records.
机译:新兴先进技术在电子卫生部门改善了该行业,帮助发明了新药,降低了成本,更好的咨询和治疗。改善源自卫生保健提供者和研究人员之间共享的患者记录分析。由于这种合作,医疗保健部门存在新兴的安全和隐私要求。隐私保留的数据发布在防止披露个人身份中起着重要作用。已经提出了许多隐私保留模型,用于数据发布。但是,它们仍然遭受很少的缺点i)不能在1:m数据集ii上应用隐私和实用程序之间的权衡。为了满足分类实用程序和隐私之间的多记录隐私和权衡,我们提出了准识别桶单个多敏感性桶(QIAB-IMSB)算法。我们工作的主要重点是匿名匿名的个人多价值记录。我们工作的初始阶段是合并个人的多记录。接下来,我们为准标识符桶(QIAB)和(k,l) - 单个多敏感属性桶(IMSB)的多样性来实现垂直分区并应用k-匿名性。我们所提出的方法主要集中在防止敏感的联系攻击,实施等级泛化分类。我们的实验结果证明,在保健记录的隐私数据出版中有一种改进的隐私和分类效用。

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