Approximating Functions with Approximate Privacy for Applications in Signal Estimation and Learning

Author:

Tasnim Naima1ORCID,Mohammadi Jafar2ORCID,Sarwate Anand D.3ORCID,Imtiaz Hafiz1ORCID

Affiliation:

1. Department of Electrical and Electronic Engineering, Bangladesh University of Engineering and Technology, Dhaka P.O. Box 1205, Bangladesh

2. Nokia, Werinherstraße 91, 81541 Munich, Germany

3. Department of Electrical and Computer Engineering, Rutgers, The State University of New Jersey, 94 Brett Road, Piscataway, NJ 08854-8058, USA

Abstract

Large corporations, government entities and institutions such as hospitals and census bureaus routinely collect our personal and sensitive information for providing services. A key technological challenge is designing algorithms for these services that provide useful results, while simultaneously maintaining the privacy of the individuals whose data are being shared. Differential privacy (DP) is a cryptographically motivated and mathematically rigorous approach for addressing this challenge. Under DP, a randomized algorithm provides privacy guarantees by approximating the desired functionality, leading to a privacy–utility trade-off. Strong (pure DP) privacy guarantees are often costly in terms of utility. Motivated by the need for a more efficient mechanism with better privacy–utility trade-off, we propose Gaussian FM, an improvement to the functional mechanism (FM) that offers higher utility at the expense of a weakened (approximate) DP guarantee. We analytically show that the proposed Gaussian FM algorithm can offer orders of magnitude smaller noise compared to the existing FM algorithms. We further extend our Gaussian FM algorithm to decentralized-data settings by incorporating the CAPE protocol and propose capeFM. Our method can offer the same level of utility as its centralized counterparts for a range of parameter choices. We empirically show that our proposed algorithms outperform existing state-of-the-art approaches on synthetic and real datasets.

Funder

US National Science Foundation

US National Institutes of Health

Publisher

MDPI AG

Subject

General Physics and Astronomy

Reference47 articles.

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3. Jayaraman, B., and Evans, D. (2019, January 14–16). Evaluating differentially private machine learning in practice. Proceedings of the 28th USENIX Security Symposium (USENIX Security 19), Santa Clara, CA, USA.

4. Dwork, C., McSherry, F., Nissim, K., and Smith, A. (2006). Theory of Cryptography Conference, Springer.

5. Sok: Differential privacies;Desfontaines;Proc. Priv. Enhancing Technol.,2020

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