局部薛定谔桥采样器

Georg A. Gottwald, Sebastian Reich
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引用次数: 0

摘要

我们考虑了从未知分布中采样的生成问题,对于这个问题,只有足够多的训练样本可用。这种方法的一个关键瓶颈是所需的训练样本与环境状态空间的维度 $d$ 呈指数关系。我们提出了一种利用条件期望值的条件独立性的本地化策略。因此,本地化将单个高维薛定谔桥问题替换为可用训练样本上的 $d$ 低维薛定谔桥问题。与原始方法一样,本地化采样器是稳定的,并且具有几何遍历性。该采样器还可以自然地扩展到条件采样和贝叶斯推理。我们通过对维度不断增加的高斯问题和随机子网格尺度参数化条件采样问题的实验,证明了我们提出的方案的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Localized Schrödinger Bridge Sampler
We consider the generative problem of sampling from an unknown distribution for which only a sufficiently large number of training samples are available. In this paper, we build on previous work combining Schr\"odinger bridges and Langevin dynamics. A key bottleneck of this approach is the exponential dependence of the required training samples on the dimension, $d$, of the ambient state space. We propose a localization strategy which exploits conditional independence of conditional expectation values. Localization thus replaces a single high-dimensional Schr\"odinger bridge problem by $d$ low-dimensional Schr\"odinger bridge problems over the available training samples. As for the original approach, the localized sampler is stable and geometric ergodic. The sampler also naturally extends to conditional sampling and to Bayesian inference. We demonstrate the performance of our proposed scheme through experiments on a Gaussian problem with increasing dimensions and on a stochastic subgrid-scale parametrization conditional sampling problem.
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