CCS2023

Securely Sampling Discrete Gaussian Noise for Multi-Party Differential Privacy

Chengkun Wei, Ruijing Yu, Yuan Fan, Wenzhi Chen, Tianhao Wang

4 citations

Abstract

Differential Privacy (DP) is a widely used technique for protecting individuals' privacy by limiting what can be inferred about them from aggregate data. Recently, there have been efforts to implement DP using Secure Multi-Party Computation (MPC) to achieve high utility without the need for a trusted third party. One of the key components of implementing DP in MPC is noise sampling. Our work presents the first MPC solution for sampling discrete Gaussian, a common type of noise used for constructing DP mechanisms, which plays nicely with malicious secure MPC protocols.