Instance-optimal Mean Estimation Under Differential Privacy
About
Mean estimation under differential privacy is a fundamental problem, but worst-case optimal mechanisms do not offer meaningful utility guarantees in practice when the global sensitivity is very large. Instead, various heuristics have been proposed to reduce the error on real-world data that do not resemble the worst-case instance. This paper takes a principled approach, yielding a mechanism that is instance-optimal in a strong sense. In addition to its theoretical optimality, the mechanism is also simple and practical, and adapts to a variety of data characteristics without the need of parameter tuning. It easily extends to the local and shuffle model as well.
Ziyue Huang, Yuting Liang, Ke Yi• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Classification | CIFAR-10-C Brightness Corruption, Severity Level 5 (test) | Accuracy (CIFAR-10-C Brightness 5)14.33 | 107 |
Showing 1 of 1 rows