CryptoDB
Linsheng Liu
Publications
Year
Venue
Title
2022
TCC
Secure Sampling with Sublinear Communication
Abstract
Random sampling from specified distributions is an important tool with wide applications for analysis of large-scale data. In this paper we study how to randomly sample when the distribution is partitioned among two parties' private inputs. Of course, a trivial solution is to have one party send a (possibly encrypted) description of its weights to the other party who can then sample over the entire distribution (possibly using homomorphic encryption). However, this approach requires communication that is linear in the input size which is prohibitively expensive in many settings. In this paper, we investigate secure 2-party sampling with sublinear communication for many standard distributions. We develop protocols for L_1, and L_2 sampling. Additionally, we investigate the feasibility of sublinear product sampling, showing impossibility for the general problem and showing a protocol for a restricted case of the problem. We additionally show how such product sampling can be used to instantiate a sublinear communication 2-party exponential mechanism for differentially-private data release.
Coauthors
- Seung Geol Choi (1)
- Dana Dachman-Soled (1)
- S. Dov Gordon (1)
- Linsheng Liu (1)
- Arkady Yerukhimovich (1)