ITCRNov 19, 2021

On the Download Rate of Homomorphic Secret Sharing

arXiv:2111.10126v212 citations
Originality Incremental advance
AI Analysis

This work addresses efficiency in secure computation for cryptography, offering incremental improvements to existing HSS schemes.

The paper studies the download rate of homomorphic secret sharing (HSS), characterizing optimal rates for linear schemes and presenting techniques to improve rates, including nonlinear methods that outperform linear schemes in some cases.

A homomorphic secret sharing (HSS) scheme is a secret sharing scheme that supports evaluating functions on shared secrets by means of a local mapping from input shares to output shares. We initiate the study of the download rate of HSS, namely, the achievable ratio between the length of the output shares and the output length when amortized over $\ell$ function evaluations. We obtain the following results. * In the case of linear information-theoretic HSS schemes for degree-$d$ multivariate polynomials, we characterize the optimal download rate in terms of the optimal minimal distance of a linear code with related parameters. We further show that for sufficiently large $\ell$ (polynomial in all problem parameters), the optimal rate can be realized using Shamir's scheme, even with secrets over $\mathbb{F}_2$. * We present a general rate-amplification technique for HSS that improves the download rate at the cost of requiring more shares. As a corollary, we get high-rate variants of computationally secure HSS schemes and efficient private information retrieval protocols from the literature. * We show that, in some cases, one can beat the best download rate of linear HSS by allowing nonlinear output reconstruction and $2^{-Ω(\ell)}$ error probability.

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