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Symmetric Metropolis-within-Gibbs algorithm for lattice Gaussian sampling

机译:晶格高斯采样的对称大都会内 - 内吉布斯算法

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As a key sampling scheme in Markov chain Monte Carlo (MCMC) methods, Gibbs sampling is widely used in various research fields due to its elegant univariate conditional sampling, especially in tacking with multidimensional sampling systems. In this paper, a Gibbs-based sampler named as symmetric Metropolis-within-Gibbs (SMWG) algorithm is proposed for lattice Gaussian sampling. By adopting a symmetric Metropolis-Hastings (MH) step into the Gibbs update, we show the Markov chain arising from it is geometrically ergodic, which converges exponentially fast to the stationary distribution. Moreover, by optimizing its symmetric proposal distribution, the convergence efficiency can be further enhanced.
机译:作为马尔可夫链蒙特卡罗(MCMC)方法的关键采样方案,由于其优雅的单变量条件采样,Gibbs采样广泛用于各种研究领域,特别是在与多维采样系统中加密。在本文中,提出了一种基于GIBBS的采样器,名为对称的Metropolis-In-Gibbs(SMWG)算法,用于格子高斯采样。通过将对称的大都会 - 黑斯廷斯(MH)进入GIBBS更新,我们将从它产生的马尔可夫链展示是几何ergodic,这会迅速收敛到静止分布。此外,通过优化其对称提案分布,可以进一步增强收敛效率。

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