随机曲面采样的尖锐混合时间界限

P. Caputo, F. Martinelli, F. Toninelli
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摘要

我们分析了两种常用的随机曲面模型的自然局部马尔可夫链(吉布斯采样器)的混合时间:(i)具有“几乎平面”边界条件的离散单调曲面和(ii)一维离散固体对固体(SOS)模型。在这两种情况下,我们都证明了第一个几乎最优界。我们的证明受到所谓的“平均曲率”启发式的启发:在大尺度上,动力学应该近似于确定性运动,其中表面的每个点根据与局部逆平均曲率半径成比例的漂移移动。关键技术成分是单调性、耦合性和D. Wilson[17]在菱形平铺马尔可夫链框架中的一个论证。与以前的结果相比,我们的方法的新颖性在于证明,在高概率下,动力学是由遵循平均曲率处方的确定性进化所主导的。我们的方法同样适用于两种模型,尽管它们与平均高度剖面的平衡最大偏差发生在非常不同的尺度上。
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Sharp Mixing Time Bounds for Sampling Random Surfaces
We analyze the mixing time of a natural local Markov Chain (Gibbs sampler) for two commonly studied models of random surfaces: (i) discrete monotone surfaces with "almost planar" boundary conditions and(ii) the one-dimensional discrete Solid-on-Solid (SOS)model. In both cases we prove the first almost optimal bounds. Our proof is inspired by the so-called "meancurvature" heuristic: on a large scale, the dynamics should approximate a deterministic motion in which each point of the surface moves according to a drift proportional to the local inverse mean curvature radius. Key technical ingredients are monotonicity, coupling and an argument due to D. Wilson [17] in the framework of lozenge tiling Markov Chains. The novelty of our approach with respect to previous results consists in proving that, with high probability, the dynamics is dominated by a deterministic evolution which follows the mean curvature prescription. Our method works equally well for both models despite the fact that their equilibrium maximal deviations from the average height profile occur on very different scales.
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