Title
Convergence rate bounds for iterative random functions using one-shot coupling
Abstract
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 in Roberts and Rosenthal (Process Appl 99:195–208, 2002) and generalized in Madras and Sezer (Bernoulli 16:882–908, 2010). 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 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.
Year
DOI
Venue
2022
10.1007/s11222-022-10134-x
Statistics and Computing
Keywords
DocType
Volume
One-shot coupling, Convergence rate, Iterated random functions, Markov chain, Total variation distance, Gibbs sampler
Journal
32
Issue
ISSN
Citations 
5
0960-3174
0
PageRank 
References 
Authors
0.34
3
2
Name
Order
Citations
PageRank
Sabrina Sixta100.34
Jeffrey S. Rosenthal235743.06