The Journal of Privacy and Confidentiality (Jun 2024)

Generalized Rainbow Differential Privacy

  • Yuzhou Gu,
  • Ziqi Zhou,
  • Onur Günlü,
  • Rafael G. L. D'Oliveira,
  • Parastoo Sadeghi,
  • Muriel Médard,
  • Rafael F. Schaefer

DOI
https://doi.org/10.29012/jpc.896
Journal volume & issue
Vol. 14, no. 2

Abstract

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We study a new framework for designing differentially private (DP) mechanisms via randomized graph colorings, called rainbow differential privacy. In this framework, datasets are nodes in a graph, and two neighboring datasets are connected by an edge. Each dataset in the graph has a preferential ordering for the possible outputs of the mechanism, and these orderings are called rainbows. Different rainbows partition the graph of connected datasets into different regions. We show that if a DP mechanism at the boundary of such regions is fixed and it behaves identically for all same-rainbow boundary datasets, then a unique optimal $(\epsilon,\delta)$-DP mechanism exists (as long as the boundary condition is valid) and can be expressed in closed-form. Our proof technique is based on an interesting relationship between dominance ordering and DP, which applies to any finite number of colors and for $(\epsilon,\delta)$-DP, improving upon previous results that only apply to at most three colors and for $\epsilon$-DP. We justify the homogeneous boundary condition assumption by giving an example with non-homogeneous boundary condition, for which there exists no optimal DP mechanism.

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