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Markov Chain Monte Carlo Methods for Lattice Gaussian Sampling: Convergence Analysis and Enhancement

机译:格子高斯抽样的马尔可夫链蒙特卡罗方法:收敛性分析和增强

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摘要

Sampling from lattice Gaussian distribution has emerged as an important problem in coding, decoding, and cryptography. In this paper, the classic Gibbs algorithm from Markov chain Monte Carlo (MCMC) methods is demonstrated to be geometrically ergodic for lattice Gaussian sampling, which means that the Markov chain arising from it converges exponentially fast to the stationary distribution. Meanwhile, the exponential convergence rate of the Markov chain is also derived through the spectral radius of the forward operator. Then, a comprehensive analysis of the convergence rate is carried out, and two sampling schemes are proposed to further enhance the convergence performance. The first one, referred to as a Metropolis-within-Gibbs (MWG) algorithm, improves the convergence by refining the state space of the univariate sampling. The second is a blocked strategy of the Gibbs algorithm, which performs sampling over multivariates at each Markov move, and is shown to yield a better convergence rate than the traditional univariate sampling. In order to perform blocked sampling efficiently, the Gibbs-Klein (GK) algorithm is proposed, which samples block by block using the Kleins algorithm. Furthermore, the validity of the GK algorithm is demonstrated by showing its ergodicity. Simulation results based on MIMO detections are presented to confirm the convergence gain brought by the proposed Gibbs sampling schemes.
机译:从晶格高斯分布采样已经成为编码,解码和密码学中的重要问题。本文证明了马尔可夫链蒙特卡洛(MCMC)方法的经典Gibbs算法在格高斯抽样中具有几何遍历性,这意味着由此产生的马尔可夫链快速地指数收敛于平稳分布。同时,还通过前向算子的谱半径推导了马尔可夫链的指数收敛速度。然后,对收敛速度进行了综合分析,并提出了两种采样方案以进一步提高收敛性能。第一种方法,称为“大都市中的大都市”算法(MWG),通过优化单变量采样的状态空间来提高收敛性。第二个是Gibbs算法的阻塞策略,该策略在每次Markov移动时都对多变量进行采样,并且显示出比传统的单变量采样更好的收敛速度。为了有效地执行块采样,提出了吉布斯-克莱因(GK)算法,该算法使用Kleins算法逐块采样。此外,通过显示其遍历性证明了GK算法的有效性。提出了基于MIMO检测的仿真结果,以确认提出的Gibbs采样方案带来的收敛增益。

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