Locally Private Hypothesis Selection
- Sivakanth Gopi ,
- Gautam Kamath ,
- Janardhan (Jana) Kulkarni ,
- Aleksandar Nikolov ,
- Zhiwei Steven Wu ,
- Huanyu Zhang
Conference on Learning Theory (COLT) 2020 |
We initiate the study of hypothesis selection under local differential privacy. Given samples from an unknown probability distribution p and a set of k probability distributions Q, we aim to output, under the constraints of ε-local differential privacy, a distribution from Q whose total variation distance to p is comparable to the best such distribution.