Comparative Study of Differentially Private Synthetic Data Algorithms from the NIST PSCR Differential Privacy Synthetic Data Challenge

Differentially private synthetic data generation offers a recent solution to release analytically useful data while preserving the privacy of individuals in the data. In order to utilize these algorithms for public policy decisions, policymakers need an accurate understanding of these algorithms�...

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Main Authors: Claire McKay Bowen, Joshua Snoke
Format: Article
Language:English
Published: Labor Dynamics Institute 2021-02-01
Series:The Journal of Privacy and Confidentiality
Subjects:
Online Access:http://www.journalprivacyconfidentiality.org/index.php/jpc/article/view/748
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spelling doaj-4365591cccbf4b19ad5546081734b7622021-02-20T18:32:59ZengLabor Dynamics InstituteThe Journal of Privacy and Confidentiality2575-85272021-02-0111110.29012/jpc.748Comparative Study of Differentially Private Synthetic Data Algorithms from the NIST PSCR Differential Privacy Synthetic Data ChallengeClaire McKay Bowen0Joshua Snoke1Urban InstituteRAND Corporation Differentially private synthetic data generation offers a recent solution to release analytically useful data while preserving the privacy of individuals in the data. In order to utilize these algorithms for public policy decisions, policymakers need an accurate understanding of these algorithms' comparative performance. Correspondingly, data practitioners also require standard metrics for evaluating the analytic qualities of the synthetic data. In this paper, we present an in-depth evaluation of several differentially private synthetic data algorithms using actual differentially private synthetic data sets created by contestants in the recent National Institute of Standards and Technology Public Safety Communications Research (NIST PSCR) Division's ``"Differential Privacy Synthetic Data Challenge." We offer analyses of these algorithms based on both the accuracy of the data they create and their usability by potential data providers. We frame the methods used in the NIST PSCR data challenge within the broader differentially private synthetic data literature. We implement additional utility metrics, including two of our own, on the differentially private synthetic data and compare mechanism utility on three categories. Our comparative assessment of the differentially private data synthesis methods and the quality metrics shows the relative usefulness, general strengths and weaknesses, preferred choices of algorithms and metrics. Finally we describe the implications of our evaluation for policymakers seeking to implement differentially private synthetic data algorithms on future data products. http://www.journalprivacyconfidentiality.org/index.php/jpc/article/view/748differential privacysynthetic datautilityevaluationstatistical disclosure control
collection DOAJ
language English
format Article
sources DOAJ
author Claire McKay Bowen
Joshua Snoke
spellingShingle Claire McKay Bowen
Joshua Snoke
Comparative Study of Differentially Private Synthetic Data Algorithms from the NIST PSCR Differential Privacy Synthetic Data Challenge
The Journal of Privacy and Confidentiality
differential privacy
synthetic data
utility
evaluation
statistical disclosure control
author_facet Claire McKay Bowen
Joshua Snoke
author_sort Claire McKay Bowen
title Comparative Study of Differentially Private Synthetic Data Algorithms from the NIST PSCR Differential Privacy Synthetic Data Challenge
title_short Comparative Study of Differentially Private Synthetic Data Algorithms from the NIST PSCR Differential Privacy Synthetic Data Challenge
title_full Comparative Study of Differentially Private Synthetic Data Algorithms from the NIST PSCR Differential Privacy Synthetic Data Challenge
title_fullStr Comparative Study of Differentially Private Synthetic Data Algorithms from the NIST PSCR Differential Privacy Synthetic Data Challenge
title_full_unstemmed Comparative Study of Differentially Private Synthetic Data Algorithms from the NIST PSCR Differential Privacy Synthetic Data Challenge
title_sort comparative study of differentially private synthetic data algorithms from the nist pscr differential privacy synthetic data challenge
publisher Labor Dynamics Institute
series The Journal of Privacy and Confidentiality
issn 2575-8527
publishDate 2021-02-01
description Differentially private synthetic data generation offers a recent solution to release analytically useful data while preserving the privacy of individuals in the data. In order to utilize these algorithms for public policy decisions, policymakers need an accurate understanding of these algorithms' comparative performance. Correspondingly, data practitioners also require standard metrics for evaluating the analytic qualities of the synthetic data. In this paper, we present an in-depth evaluation of several differentially private synthetic data algorithms using actual differentially private synthetic data sets created by contestants in the recent National Institute of Standards and Technology Public Safety Communications Research (NIST PSCR) Division's ``"Differential Privacy Synthetic Data Challenge." We offer analyses of these algorithms based on both the accuracy of the data they create and their usability by potential data providers. We frame the methods used in the NIST PSCR data challenge within the broader differentially private synthetic data literature. We implement additional utility metrics, including two of our own, on the differentially private synthetic data and compare mechanism utility on three categories. Our comparative assessment of the differentially private data synthesis methods and the quality metrics shows the relative usefulness, general strengths and weaknesses, preferred choices of algorithms and metrics. Finally we describe the implications of our evaluation for policymakers seeking to implement differentially private synthetic data algorithms on future data products.
topic differential privacy
synthetic data
utility
evaluation
statistical disclosure control
url http://www.journalprivacyconfidentiality.org/index.php/jpc/article/view/748
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AT joshuasnoke comparativestudyofdifferentiallyprivatesyntheticdataalgorithmsfromthenistpscrdifferentialprivacysyntheticdatachallenge
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