Post-processing immunity is a fundamental property of differential privacy: it enables arbitrary data-independent transformations to differentially private outputs without affecting their privacy guarantees. Post-processing is routinely applied in data-release applications, including census data, which are then used to make allocations with substantial societal impacts. This paper shows that post-processing causes disparate impacts on individuals or groups and analyzes two critical settings: the release of differentially private datasets and the use of such private datasets for downstream decisions, such as the allocation of funds informed by US Census data. In the first setting, the paper proposes tight bounds on the unfairness of traditional post-processing mechanisms, giving a unique tool to decision-makers to quantify the disparate impacts introduced by their release. In the second setting, this paper proposes a novel post-processing mechanism that is (approximately) optimal under different fairness metrics, either reducing fairness issues substantially or reducing the cost of privacy. The theoretical analysis is complemented with numerical simulations on Census data.
翻译:处理后豁免是不同隐私的一个基本属性:它使任意的数据独立转换成为差异性私人产出,而不影响其隐私保障; 处理后在数据释放应用中经常应用,包括普查数据,然后用于分配具有重大社会影响的分配; 本文表明,处理后对个人或群体造成不同影响,并分析两个关键环境:发布差异性私人数据集,以及使用这种私人数据集进行下游决策,例如美国人口普查数据所通报的资金分配; 在第一个环境中,文件提议对传统的处理后机制的不公平性进行严格限制,为决策者提供独特的工具,以量化其发布后产生的不同影响; 在第二个环境中,本文件提出一个新的处理后处理机制,在不同的公平度度度指标下,这种机制(大约)是最佳的,要么大幅度降低公平问题,要么降低隐私成本; 理论分析辅之以普查数据的数字模拟。