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Markov chain Monte Carlo algorithms for lattice Gaussian sampling

机译:马尔可夫链蒙特卡洛算法用于格子高斯采样

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摘要

To be considered for an IEEE Jack Keil Wolf ISIT Student Paper Award. Sampling from a lattice Gaussian distribution is emerging as an important problem in various areas such as coding and cryptography. The default sampling algorithm — Klein's algorithm yields a distribution close to the lattice Gaussian only if the standard deviation is sufficiently large. In this paper, we propose the Markov chain Monte Carlo (MCMC) method for lattice Gaussian sampling when this condition is not satisfied. In particular, we present a sampling algorithm based on Gibbs sampling, which converges to the target lattice Gaussian distribution for any value of the standard deviation. To improve the convergence rate, a more efficient algorithm referred to as Gibbs-Klein sampling is proposed, which samples block by block using Klein's algorithm. We show that Gibbs-Klein sampling yields a distribution close to the target lattice Gaussian, under a less stringent condition than that of the original Klein algorithm.
机译:被考虑为IEEE Jack Keil Wolf ISIT学生论文奖。在诸如编码和密码学之类的各个领域中,从晶格高斯分布采样成为一个重要问题。默认的采样算法-克莱因算法只有在标准偏差足够大的情况下才会产生接近于格子高斯分布的分布。在本文中,我们提出了不满足此条件的马尔可夫链蒙特卡洛(MCMC)方法进行格子高斯采样。特别是,我们提出了一种基于Gibbs采样的采样算法,对于任何标准偏差值,该算法都收敛到目标晶格高斯分布。为了提高收敛速度,提出了一种更有效的算法,称为Gibbs-Klein采样,该算法使用Klein算法逐块采样。我们显示,在比原始Klein算法更宽松的条件下,Gibbs-Klein采样产生的分布接近目标晶格高斯。

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