Integer Subspace Differential Privacy

Authors

  • Prathamesh Dharangutte Rutgers University
  • Jie Gao Rutgers University
  • Ruobin Gong Rutgers University
  • Fang-Yi Yu George Mason University

DOI:

https://doi.org/10.1609/aaai.v37i6.25895

Keywords:

ML: Privacy-Aware ML, APP: Other Applications

Abstract

We propose new differential privacy solutions for when external invariants and integer constraints are simultaneously enforced on the data product. These requirements arise in real world applications of private data curation, including the public release of the 2020 U.S. Decennial Census. They pose a great challenge to the production of provably private data products with adequate statistical usability. We propose integer subspace differential privacy to rigorously articulate the privacy guarantee when data products maintain both the invariants and integer characteristics, and demonstrate the composition and post-processing properties of our proposal. To address the challenge of sampling from a potentially highly restricted discrete space, we devise a pair of unbiased additive mechanisms, the generalized Laplace and the generalized Gaussian mechanisms, by solving the Diophantine equations as defined by the constraints. The proposed mechanisms have good accuracy, with errors exhibiting sub-exponential and sub-Gaussian tail probabilities respectively. To implement our proposal, we design an MCMC algorithm and supply empirical convergence assessment using estimated upper bounds on the total variation distance via L-lag coupling. We demonstrate the efficacy of our proposal with applications to a synthetic problem with intersecting invariants, a sensitive contingency table with known margins, and the 2010 Census county-level demonstration data with mandated fixed state population totals.

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Published

2023-06-26

How to Cite

Dharangutte, P., Gao, J., Gong, R., & Yu, F.-Y. (2023). Integer Subspace Differential Privacy. Proceedings of the AAAI Conference on Artificial Intelligence, 37(6), 7349-7357. https://doi.org/10.1609/aaai.v37i6.25895

Issue

Section

AAAI Technical Track on Machine Learning I