CryptoDB
Chao Yan
Publications
Year
Venue
Title
2025
CRYPTO
Computationally Differentially Private Inner Product Protocols Imply Oblivious Transfer
Abstract
In distributed differential privacy, multiple parties collaborate to analyze their combined data while each party protects the confidentiality of its data from the others. Interestingly, for certain fundamental two-party functions, such as the inner product and Hamming distance, the accuracy of distributed solutions significantly lags behind what can be achieved in the centralized model. For computational differential privacy, however, these limitations can be circumvented using oblivious transfer (used to implement secure multi-party computation).
Yet, no results show that oblivious transfer is indeed necessary for accurately estimating a non-Boolean functionality.
In particular, for the inner-product functionality, it was previously unknown whether oblivious transfer is necessary even for the best possible constant additive error.
In this work, we prove that any computationally differentially private protocol that estimates the inner product over {-1,1}^n x {-1,1}^n up to an additive error of O(n^{1/6}), can be used to construct oblivious transfer. In particular, our result implies that protocols with sub-polynomial accuracy are equivalent to oblivious transfer. In this accuracy regime, our result improves upon Haitner, Mazor, Silbak, and Tsfadia [STOC '22] who showed that a key-agreement protocol is necessary.
Coauthors
- Iftach Haitner (1)
- Noam Mazor (1)
- Jad Silbak (1)
- Eliad Tsfadia (1)
- Chao Yan (1)