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Geometric Ergodicity and Scanning Strategies for Two-Component Gibbs Samplers

机译:双组分GIBBS采样器的几何ergodicity和扫描策略

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摘要

In Markov chain Monte Carlo analysis, rapid convergence of the chain to its target distribution is crucial. A chain that converges geometrically quickly is geometrically ergodic. We explore geometric ergodicity for two-component Gibbs samplers (GS) that, under a chosen scanning strategy, evolve through one-at-a-time component-wise updates. We consider three such strategies: composition, random sequence, and random scans. We show that if any one of these scans produces a geometrically ergodic GS, so too do the others. Further, we provide a simple set of sufficient conditions for the geometric ergodicity of the GS. We illustrate our results using two examples.
机译:在马尔可夫链Monte Carlo分析中,链条的快速收敛到其目标分布至关重要。几何上迅速收敛的链是几何形状的遍历。我们探索双组分GIBBS采样器(GS)的几何遍历,即在所选扫描策略下,通过一次性组件 - 明智更新演变。我们考虑三种这样的策略:组成,随机序列和随机扫描。我们表明,如果这些扫描中的任何一个产生了几何形状的GS,因此也是如此。此外,我们为GS的几何遍历提供了一种简单的充分条件。我们使用两个例子说明了我们的结果。

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