Summary Statistic Privacy in Data Sharing
This addresses privacy concerns for data holders sharing sensitive data, but it is incremental as it builds on existing privacy mechanisms.
The paper tackles the problem of sharing data while hiding summary statistics like mean and standard deviation, by proposing a randomization mechanism and showing that it achieves better privacy-distortion tradeoffs than alternatives on real-world datasets.
We study a setting where a data holder wishes to share data with a receiver, without revealing certain summary statistics of the data distribution (e.g., mean, standard deviation). It achieves this by passing the data through a randomization mechanism. We propose summary statistic privacy, a metric for quantifying the privacy risk of such a mechanism based on the worst-case probability of an adversary guessing the distributional secret within some threshold. Defining distortion as a worst-case Wasserstein-1 distance between the real and released data, we prove lower bounds on the tradeoff between privacy and distortion. We then propose a class of quantization mechanisms that can be adapted to different data distributions. We show that the quantization mechanism's privacy-distortion tradeoff matches our lower bounds under certain regimes, up to small constant factors. Finally, we demonstrate on real-world datasets that the proposed quantization mechanisms achieve better privacy-distortion tradeoffs than alternative privacy mechanisms.