One-shot coupling is a method of bounding the convergence rate between two copies of a Markov chain in total variation distance, which was first introduced by Roberts and Rosenthal and generalized by Madras and Sezer. The method is divided into two parts: the contraction phase, when the chains converge in expected distance and the coalescing phase, which occurs at the last iteration, when there is an attempt to couple. One-shot coupling does not require the use of any exogenous variables like a drift function or a minorization constant. In this paper, we summarize the one-shot coupling method into the One-Shot Coupling Theorem. We then apply the theorem to two families of Markov chains: the random functional autoregressive process and the autoregressive conditional heteroscedastic (ARCH) process. We provide multiple examples of how the theorem can be used on various models including ones in high dimensions. These examples illustrate how the theorem's conditions can be verified in a straightforward way. The one-shot coupling method appears to generate tight geometric convergence rate bounds.
翻译:单发连接是一种将马尔科夫链条的两份相联率以完全变异距离结合的方法,最初由罗伯茨和罗森塔尔采用,由马德拉斯和塞泽普遍采用。该方法分为两个部分:收缩阶段,当链条在预期距离中汇合时和凝聚阶段,在最后一次迭代时发生,当试图对齐时发生。一发连接并不要求使用任何外源变量,例如漂移函数或小化常数。在本文中,我们将一发联结方法归纳为“单制相联理论”。然后,我们将该理论应用于马尔科夫链的两个组别:随机功能递增进程和自动递增的有条件递增性超振性(ARCH)进程。我们提供了多个例子,说明在各种模型(包括高维度模型)上如何使用这些矩。这些示例说明了如何以直截方式验证这些矩的状态。一发式组合方法似乎会产生紧紧的几何趋同率。