An Adaptive Differential Privacy Algorithm for Range Queries over Healthcare Data

Asma Alnemari, C. Romanowski, R. Raj
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引用次数: 14

Abstract

Differential privacy is an approach that preserves patient privacy while permitting researchers access to medical data. This paper presents mechanisms proposed to satisfy differential privacy while answering a given workload of range queries. Representing input data as a vector of counts, these methods partition the vector according to relationships between the data and the ranges of the given queries. After partitioning the vector into buckets, the counts of each bucket are estimated privately and split among the bucket's positions to answer the given query set. The performance of the proposed method was evaluated using different workloads over several attributes. The results show that partitioning the vector based on the data can produce more accurate answers, while partitioning the vector based on the given workload improves privacy. This paper's two main contributions are: (1) improving earlier work on partitioning mechanisms by building a greedy algorithm to partition the counts' vector efficiently, and (2) its adaptive algorithm considers the sensitivity of the given queries before providing results.
医疗保健数据范围查询的自适应差分隐私算法
差异隐私是一种保护患者隐私的方法,同时允许研究人员访问医疗数据。本文提出了在回答给定范围查询工作负载时满足差异隐私的机制。这些方法将输入数据表示为计数向量,并根据数据与给定查询范围之间的关系对向量进行划分。在将向量划分为桶之后,私下估计每个桶的计数,并在桶的位置之间进行分割,以回答给定的查询集。在多个属性上使用不同的工作负载来评估所提出方法的性能。结果表明,基于数据划分向量可以得到更准确的答案,而基于给定工作负载划分向量可以提高隐私性。本文的两个主要贡献是:(1)通过构建一个贪婪算法来有效地划分计数向量,改进了早先关于分区机制的工作;(2)其自适应算法在提供结果之前考虑了给定查询的敏感性。
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