Optimizing Noise Distributions for Differential Privacy
Abstract
We propose a unified optimization framework for designing continuous and
discrete noise distributions that ensure differential privacy (DP) by
minimizing Rényi DP, a variant of DP, under a cost constraint. Rényi DP has
the advantage that by considering different values of the Rényi parameter
$\alpha$, we can tailor our optimization for any number of compositions. To
solve the optimization problem, we reduce it to a finite-dimensional convex
formulation and perform preconditioned gradient descent. The resulting noise
distributions are then compared to their Gaussian and Laplace counterparts.
Numerical results demonstrate that our optimized distributions are consistently
better, with significant improvements in $(\varepsilon, \delta)$-DP guarantees
in the moderate composition regimes, compared to Gaussian and Laplace
distributions with the same variance.