This paper establishes non-asymptotic bounds on Wasserstein distances between the invariant probability measures of inexact MCMC methods and their target distribution. In particular, the results apply to the unadjusted Langevin algorithm and to unadjusted Hamiltonian Monte Carlo, but also to methods relying on other discretization schemes. Our focus is on understanding the precise dependence of the accuracy on both the dimension and the discretization step size. We show that the dimension dependence relies on some key quantities. As a consequence, the same dependence on the step size and the dimension as in the product case can be recovered for several important classes of models. On the other hand, for more general models, the dimension dependence of the asymptotic bias may be worse than in the product case even if the exact dynamics has dimension-free mixing properties.
翻译:本文确定了瓦森斯坦在不精确的MCMC方法的不精确概率测量及其目标分布之间不同概率度量的瓦森斯坦距离的非非无线界限, 特别是结果适用于未调整的朗埃文算法和未调整的汉密尔顿蒙特卡洛, 但也适用于依赖其他离散计划的方法。 我们的重点是了解准确性对尺寸和离散步骤大小的精确依赖性。 我们显示, 维度依赖某些关键数量。 因此, 几个重要模型类的职级大小和尺寸依赖性可以恢复。 另一方面, 对于更普通的模型来说, 无受体偏差的维度依赖性可能比产品中更差, 即使确切的动态具有无维度混合特性。