Confidential computing for OpenPOWER
Guerney D. H. Hunt, Ramachandra Pai, et al.
EuroSys 2021
The Laplace mechanism is the workhorse of differential privacy, applied to many instances where numerical data is processed. However, the Laplace mechanism can return semantically impossible values, such as negative counts, due to its infinite support. There are two popular solutions to this: (i) bounding/capping the output values and (ii) bounding the mechanism support. In this paper, we show that bounding the mechanism support, while using the parameters of the standard Laplace mechanism, does not typically preserve differential privacy. We also present a robust method to compute the optimal mechanism parameters to achieve differential privacy in such a setting.
Guerney D. H. Hunt, Ramachandra Pai, et al.
EuroSys 2021
Simone Bottoni, Giulio Zizzo, et al.
NeurIPS 2022
Stefan Schoepf, Muhammad Zaid Hameed, et al.
ICML 2025
Naoise Holohan, Stefano Braghin, et al.
CCS 2024