随机递归的自适应抽样规则

F. Hashemi, Soumyadip Ghosh, R. Pasupathy
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引用次数: 29

摘要

我们考虑的问题是找到一个未知函数的零,或优化一个未知函数,只有一个随机模拟输出噪声损坏的观察。解决这类问题的一个方便范例采用确定性递归,例如,牛顿型或信任域,并将递归中出现的函数值和导数替换为它们的采样对应项。虽然这样的范例很方便,但是对于在搜索空间中产生递归时应该花费多少模拟工作,目前还没有明确的指导。在本文中,我们为回答这个问题迈出了第一步。我们建议使用完全顺序蒙特卡罗采样方法来自适应地决定随机递归访问的每个点的采样量。这种采样的终止准则基于一定的相对宽度置信区间,以确保结果迭代是一致的,并且在严格(蒙特卡罗规范)意义上是有效的。这里提出的方法是自适应的,因为它们根据算法轨迹“学习”采样。从这个意义上说,我们的方法应该被看作是在使用预定的样本量序列的类似背景下改进最近的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On adaptive sampling rules for stochastic recursions
We consider the problem of finding a zero of an unknown function, or optimizing an unknown function, with only a stochastic simulation that outputs noise-corrupted observations. A convenient paradigm to solve such problems takes a deterministic recursion, e.g., Newton-type or trust-region, and replaces function values and derivatives appearing in the recursion with their sampled counterparts. While such a paradigm is convenient, there is as yet no clear guidance on how much simulation effort should be expended as the resulting recursion evolves through the search space. In this paper, we take the first steps towards answering this question. We propose using a fully sequential Monte Carlo sampling method to adaptively decide how much to sample at each point visited by the stochastic recursion. The termination criterion for such sampling is based on a certain relative width confidence interval constructed to ensure that the resulting iterates are consistent, and efficient in a rigorous (Monte Carlo canonical) sense. The methods presented here are adaptive in the sense that they “learn” to sample according to the algorithm trajectory. In this sense, our methods should be seen as refining recent methods in a similar context that use a predetermined sequence of sample sizes.
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