Temporally Discounted Differential Privacy for Evolving Datasets on an Infinite Horizon

F. Farokhi
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引用次数: 8

Abstract

We define discounted differential privacy, as an alternative to (conventional) differential privacy, to investigate privacy of evolving datasets, containing time series over an unbounded horizon. We use privacy loss as a measure of the amount of information leaked by the reports at a certain fixed time. We observe that privacy losses are weighted equally across time in the definition of differential privacy, and therefore the magnitude of privacy-preserving additive noise must grow without bound to ensure differential privacy over an infinite horizon. Motivated by the discounted utility theory within the economics literature, we use exponential and hyperbolic discounting of privacy losses across time to relax the definition of differential privacy under continual observations. This implies that privacy losses in distant past are less important than the current ones to an individual. We use discounted differential privacy to investigate privacy of evolving datasets using additive Laplace noise and show that the magnitude of the additive noise can remain bounded under discounted differential privacy. We illustrate the quality of privacy-preserving mechanisms satisfying discounted differential privacy on smart-meter measurement time-series of real households, made publicly available by Ausgrid (an Australian electricity distribution company).
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无限视界上演化数据集的时间贴现差分隐私
我们定义了折扣差分隐私,作为(传统)差分隐私的替代方案,以研究包含无界范围内时间序列的不断发展的数据集的隐私。我们用隐私损失来衡量某一固定时间内报告泄露的信息量。我们观察到,在差分隐私的定义中,隐私损失在时间上的权重是相等的,因此保护隐私的加性噪声的大小必须无限制地增长,以确保在无限视界上的差分隐私。在经济学文献中的效用折现理论的激励下,我们使用隐私损失随时间的指数折现和双曲折现来放宽连续观察下差异隐私的定义。这意味着,对一个人来说,过去的隐私损失没有现在的隐私损失重要。我们使用微分隐私折扣研究了使用加性拉普拉斯噪声的演化数据集的隐私性,并证明了加性噪声的大小在微分隐私折扣下可以保持有界。我们说明了隐私保护机制的质量,满足真实家庭的智能电表测量时间序列的贴现差分隐私,由Ausgrid(一家澳大利亚配电公司)公开提供。
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