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Differential Privacy Preserving Genomic Data Releasing via Factor Graph

机译:通过因子图发布差异隐私保护基因组数据

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Privacy preserving data releasing is an important problem for reconciling data openness with individual privacy. The state-of-the-art approach for privacy preserving data release is differential privacy, which offers powerful privacy guarantee without confining assumptions about the background knowledge about attackers. For genomic data with huge-dimensional attributes, however, current approaches based on differential privacy are not effective to handle. Specifically, amount of noise is required to be injected to genomic data with tens of million of SNPs (Single Nucleotide Polymorphism), which would significantly degrade the utility of released data. To address this problem, this paper proposes a differential privacy guaranteed genomic data releasing method. Through executing belief propagation on factor graph, our method can factorize the distribution of sensitive genomic data into a set of local distributions. After injecting differential-privacy noise to these local distributions, synthetic sensitive data can be obtained by sampling on noise version distribution. Synthetic sensitive data and factor graph can be further used to construct approximate distribution of non-sensitive data. Finally, samples non-sensitive genomic data from the approximate distribution to construct a synthetic genomic dataset.
机译:保持隐私的数据发布是协调数据开放性与个人隐私的重要问题。保持隐私数据释放的最先进方法是差异隐私,它提供了强大的隐私保证,而无需限制关于攻击者的背景知识的假设。但是,对于具有巨大维度属性的基因组数据,当前基于差异隐私的方法无法有效处理。具体来说,需要将噪声量注入具有数千万个SNP(单核苷酸多态性)的基因组数据中,这将大大降低已发布数据的实​​用性。为了解决这个问题,本文提出了一种差分隐私保证的基因组数据发布方法。通过在因子图上执行置信传播,我们的方法可以将敏感基因组数据的分布分解为一组局部分布。在向这些局部分布注入差分隐私噪声之后,可以通过对噪声版本分布进行采样来获取合成敏感数据。合成敏感数据和因子图可以进一步用于构造非敏感数据的近似分布。最后,从近似分布中采样非敏感基因组数据,以构建合成基因组数据集。

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