A Peskun ordering between two samplers, implying a dominance of one over the other, is known among the Markov chain Monte Carlo community for being a remarkably strong result, but it is also known for being one that is notably difficult to establish. Indeed, one has to prove that the probability to reach a state, using a sampler, is greater than or equal to the probability using the other sampler, and this must hold for all states excepting the current state. We provide in this paper a weaker version that does not require an inequality between the probabilities for all these states: the dominance holds asymptotically, as a varying parameter grows without bound, as long as the states for which the probabilities are greater than or equal to belong to a mass-concentrating set. The weak ordering turns out to be useful to compare lifted samplers for partially-ordered discrete state-spaces with their Metropolis-Hastings counterparts. An analysis yields a qualitative conclusion: they asymptotically perform better in certain situations (and we are able to identify these situations), but not necessarily in others (and the reasons why are made clear). The difference in performance is evaluated quantitatively in important applications such as graphical model simulation and variable selection. The code to reproduce all numerical experiments is available online.
翻译:在马可夫链链Monte Carlo社区中,人们知道在两个采样者之间订货的Peskun,这意味着一个比另一个占主导地位,这是马可夫链Monte Carlo社区中已知的一个非常强大的结果,但人们也知道它是一个明显难以确定的结果。事实上,人们必须证明,使用取样者到达一个国家的可能性大于或等于使用另一个采样者的可能性,而这必须维持在除当前状态以外的所有各州。我们在本文中提供了一个较弱的版本,它并不要求所有这些国家在概率上存在不平等:主导地位无处不在,因为不同的参数不受约束地增长,只要其概率大于或等于属于一个质量集成装置的国家。弱的订货单必须证明使用另一个取样者的可能性大于或等于使用其他采样者的可能性,而这对除当前状态外的所有国家来说都是如此。我们通过分析得出一个质量上的结论:它们在某些情形下表现不那么好(我们能够识别这些情况),但不一定在其它情况下不受约束地增长,只要其概率大于或等于属于一个质集的状态。