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Optimal Tree-Based Mechanisms for Differentially Private Approximate CDFs

Information Theory 2024-10-07 v4 math.IT

Abstract

This paper considers the ε\varepsilon-differentially private (DP) release of an approximate cumulative distribution function (CDF) of the samples in a dataset. We assume that the true (approximate) CDF is obtained after lumping the data samples into a fixed number KK of bins. In this work, we extend the well-known binary tree mechanism to the class of \emph{level-uniform tree-based} mechanisms and identify ε\varepsilon-DP mechanisms that have a small 2\ell_2-error. We identify optimal or close-to-optimal tree structures when either of the parameters, which are the branching factors or the privacy budgets at each tree level, are given, and when the algorithm designer is free to choose both sets of parameters. Interestingly, when we allow the branching factors to take on real values, under certain mild restrictions, the optimal level-uniform tree-based mechanism is obtained by choosing equal branching factors \emph{independent} of KK, and equal privacy budgets at all levels. Furthermore, for selected KK values, we explicitly identify the optimal \emph{integer} branching factors and tree height, assuming equal privacy budgets at all levels. Finally, we describe general strategies for improving the private CDF estimates further, by combining multiple noisy estimates and by post-processing the estimates for consistency.

Keywords

Cite

@article{arxiv.2409.18573,
  title  = {Optimal Tree-Based Mechanisms for Differentially Private Approximate CDFs},
  author = {V. Arvind Rameshwar and Anshoo Tandon and Abhay Sharma},
  journal= {arXiv preprint arXiv:2409.18573},
  year   = {2024}
}

Comments

14 pages, 1 figure, submitted to the IEEE

R2 v1 2026-06-28T18:59:15.633Z