Differentially Private Approximate Quantiles

10/11/2021
by   Haim Kaplan, et al.
0

In this work we study the problem of differentially private (DP) quantiles, in which given dataset X and quantiles q_1, ..., q_m ∈ [0,1], we want to output m quantile estimations which are as close as possible to the true quantiles and preserve DP. We describe a simple recursive DP algorithm, which we call ApproximateQuantiles (AQ), for this task. We give a worst case upper bound on its error, and show that its error is much lower than of previous implementations on several different datasets. Furthermore, it gets this low error while running time two orders of magnitude faster that the best previous implementation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/19/2020

Classical-Quantum Differentially Private Mechanisms Beyond Classical Ones

Let ε>0. An n-tuple (p_i)_i=1^n of probability vectors is called (classi...
research
11/05/2021

Tight Bounds for Differentially Private Anonymized Histograms

In this note, we consider the problem of differentially privately (DP) c...
research
06/05/2021

Numerical Composition of Differential Privacy

We give a fast algorithm to optimally compose privacy guarantees of diff...
research
06/07/2022

A Differentially Private Linear-Time fPTAS for the Minimum Enclosing Ball Problem

The Minimum Enclosing Ball (MEB) problem is one of the most fundamental ...
research
07/04/2022

High-Dimensional Private Empirical Risk Minimization by Greedy Coordinate Descent

In this paper, we study differentially private empirical risk minimizati...
research
02/04/2023

An Effective and Differentially Private Protocol for Secure Distributed Cardinality Estimation

Counting the number of distinct elements distributed over multiple data ...

Please sign up or login with your details

Forgot password? Click here to reset