We introduce a multiple target optimization framework for DP-SGD referred to as pro-active DP. In contrast to traditional DP accountants, which are used to track the expenditure of privacy budgets, the pro-active DP scheme allows one to a-priori select parameters of DP-SGD based on a fixed privacy budget (in terms of ϵ and δ) in such a way to optimize the anticipated utility (test accuracy) the most. To achieve this objective, we first propose significant improvements to the moment account method, presenting a closed-form (ϵ, δ)-DP guarantee that connects all parameters in the DP-SGD setup. We show that DP-SGD is (equation presented) with T at least ≈ 2k2/ϵ and (equation presented), where T is the total number of rounds, and K = kN is the total number of gradient computations where k measures K in number of epochs of size N of the local data set. We prove that our expression is close to tight in that if T is more than a constant factor ≈ 4 smaller than the lower bound ≈ 2k2/ϵ, then the (ϵ, δ)-DP guarantee is violated. The above DP guarantee can be enhanced in that DP-SGD is (equation presented) with T at least ≈ 2k2/ϵ together with two additional, less intuitive, conditions that allow larger ϵ ≥ 0.5. Our DP theory allows us to create a utility graph and DP calculator. These tools link privacy and utility objectives and search for optimal experiment setups, efficiently taking into account both accuracy and privacy objectives, as well as implementation goals. We furnish a comprehensive implementation flow of our proactive DP, with rigorous experiments to showcase the proof-of-concept.

Proceedings of Machine Learning Research
the 41st International Conference on Machine Learning, PMLR
Centrum Wiskunde & Informatica, Amsterdam (CWI), The Netherlands

van Dijk, M., Nguyen, N., Nguyen, T., Nguyen, L., & Nguyen, P. H. (2024). Proactive DP: A multiple target optimization framework for DP-SGD. In Proceedings of the International Conference on Machine Learning (pp. 49029–49077).