We investigate the use of a certain class of functional inequalities known as weak Poincar\'e inequalities to bound convergence of Markov chains to equilibrium. We show that this enables the straightforward and transparent derivation of subgeometric convergence bounds for methods such as the Independent Metropolis--Hastings sampler and pseudo-marginal methods for intractable likelihoods, the latter being subgeometric in many practical settings. These results rely on novel quantitative comparison theorems between Markov chains. Associated proofs are simpler than those relying on drift/minorization conditions and the tools developed allow us to recover and further extend known results as particular cases. We are then able to provide new insights into the practical use of pseudo-marginal algorithms, analyse the effect of averaging in Approximate Bayesian Computation (ABC) and the use of products of independent averages, and also to study the case of lognormal weights relevant to particle marginal Metropolis--Hastings (PMMH).
翻译:我们调查了使用被称为弱波因卡尔的某类功能不平等将马尔科夫链系结合到均衡状态的某一类功能性不平等的情况。我们表明,这样可以直接、透明地得出以下几何趋同界限,用于诸如独立大都会-哈斯登取样器和假边际方法等方法的棘手可能性,后者在许多实际环境中是亚地测量法。这些结果依赖于对马尔科夫链系之间新颖的定量比较理论。相关证据比依赖漂移/最小化条件和开发工具的证据简单,使我们能够恢复和进一步扩大已知的特定结果。然后,我们能够就伪边际算法的实际使用提供新的洞见,分析巴伊西亚相近的均值效应和独立平均产品的使用情况,并研究与微粒边际大都会-哈斯廷(PMMH)相关的逻辑权重案例。