Spherical Gaussian Leftover Hash Lemma via the Rényi Divergence

Abstract

Agrawal et al. (Asiacrypt 2013) proved the discrete Gaussian leftover hash lemma, which states that the linear transformation of the discrete spherical Gaussian is statistically close to the discrete ellipsoid Gaussian. Showing that it is statistically close to the discrete spherical Gaussian, which we call the discrete spherical Gaussian leftover hash lemma (SGLHL), is an open problem posed by Agrawal et al. In this paper, we solve the problem in a weak sense: we show that the distribution of the linear transformation of the discrete spherical Gaussian and the discrete spherical Gaussian are close with respect to the Rényi divergence (RD), which we call the weak SGLHL (wSGLHL). As an application of wSGLHL, we construct a sharper self-reduction of the learning with errors problem (LWE) problem. Applebaum et al. (CRYPTO 2009) showed that linear sums of LWE samples are statistically close to (plain) LWE samples with some unknown error parameter. In contrast, we show that linear sums of LWE samples and (plain) LWE samples with a known error parameter are close with respect to RD. As another application, we weaken the independence heuristic required for the fully homomorphic encryption scheme TFHE

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