SOTAVerified

Bilevel Optimization for Differentially Private Optimization in Energy Systems

2020-01-26Unverified0· sign in to hype

Terrence W. K. Mak, Ferdinando Fioretto, Pascal Van Hentenryck

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

This paper studies how to apply differential privacy to constrained optimization problems whose inputs are sensitive. This task raises significant challenges since random perturbations of the input data often render the constrained optimization problem infeasible or change significantly the nature of its optimal solutions. To address this difficulty, this paper proposes a bilevel optimization model that can be used as a post-processing step: It redistributes the noise introduced by a differentially private mechanism optimally while restoring feasibility and near-optimality. The paper shows that, under a natural assumption, this bilevel model can be solved efficiently for real-life large-scale nonlinear nonconvex optimization problems with sensitive customer data. The experimental results demonstrate the accuracy of the privacy-preserving mechanism and showcases significant benefits compared to standard approaches.

Tasks

Reproductions