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Differentially Private Quantiles

16 February 2021
Jennifer Gillenwater
Matthew Joseph
Alex Kulesza
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Abstract

Quantiles are often used for summarizing and understanding data. If that data is sensitive, it may be necessary to compute quantiles in a way that is differentially private, providing theoretical guarantees that the result does not reveal private information. However, when multiple quantiles are needed, existing differentially private algorithms fare poorly: they either compute quantiles individually, splitting the privacy budget, or summarize the entire distribution, wasting effort. In either case the result is reduced accuracy. In this work we propose an instance of the exponential mechanism that simultaneously estimates exactly mmm quantiles from nnn data points while guaranteeing differential privacy. The utility function is carefully structured to allow for an efficient implementation that returns estimates of all mmm quantiles in time O(mnlog⁡(n)+m2n)O(mn\log(n) + m^2n)O(mnlog(n)+m2n). Experiments show that our method significantly outperforms the current state of the art on both real and synthetic data while remaining efficient enough to be practical.

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