FLIP:一种实用的时间序列隐私保护机制

T. McElroy, A. Roy, Gaurab Hore
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引用次数: 0

摘要

保障发布数据的隐私性是数据产生机构的重要目标。近年来,人们对开发合适的隐私机制进行了广泛的研究。特别值得注意的是噪声添加与差分隐私保证的思想。然而,当应用非常严格的隐私机制时,存在损害数据效用的担忧。这种折衷在相关数据(如时间序列数据)中可能非常明显。在随机过程中加入白噪声可能会显著改变相关结构,这是过程的一个方面,对最佳预测至关重要。我们建议使用全通滤波作为定期采样时间序列数据的隐私机制,表明该过程保留了实用性,同时也为实体级时间序列提供了足够的隐私保证。
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FLIP: A Utility Preserving Privacy Mechanism for Time Series
Guaranteeing privacy in released data is an important goal for data-producing agencies. There has been extensive research on developing suitable privacy mechanisms in recent years. Particularly notable is the idea of noise addition with the guarantee of differential privacy. There are, however, concerns about compromising data utility when very stringent privacy mechanisms are applied. Such compromises can be quite stark in correlated data, such as time series data. Adding white noise to a stochastic process may significantly change the correlation structure, a facet of the process that is essential to optimal prediction. We propose the use of all-pass filtering as a privacy mechanism for regularly sampled time series data, showing that this procedure preserves utility while also providing sufficient privacy guarantees to entity-level time series.
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