论文标题

蒙特卡洛是在高维度中多项式近似的良好抽样策略

Monte Carlo is a good sampling strategy for polynomial approximation in high dimensions

论文作者

Adcock, Ben, Brugiapaglia, Simone

论文摘要

本文涉及使用多项式从有限样品中获得平滑,高维函数的近似。这项任务是计算科学和工程中许多应用的核心 - 值得注意的是,某些由参数建模和计算不确定性量化引起的核心。通常在此类应用中使用蒙特卡洛采样,以免屈服于维度的诅咒。但是,众所周知,这种策略在理论上是次优的。具体而言,有许多多项式空间$ n $,示例复杂性量表以log- quadatoration形式,即$ c \ cdot n^2 \ cdot \ cdot \ log(n)$ as $ n \ rightArrow \ rightarrow \ infty $。在过去的十年中,这种有据可查的现象导致了一致的努力,以改进,而且近乎最佳的策略,其样本复杂性是线性的,甚至在$ n $中进行线性线性缩放。在这项工作中,我们证明了蒙特卡洛实际上是高维度的一个非常好的策略,尽管它显然是宾至如归。我们首先通过系统的一组数值实验来从经验上记录这种现象。接下来,我们提出了一项理论分析,在无限多变量的塑性函数的情况下,严格证明了这一事实的合理性。我们表明,基于$ M $ MONTE CARLO样品的最小二乘近似值,其错误以$ m/\ log(m)$衰减的代数衰减,其速率与最佳$ n $ term term term-term poliemial近似值的速率相同。该结果是非构造性的,因为它假设了适当的多项式子空间进行近似。接下来,我们提出了一种基于压缩感应的方案,该方案达到了相同的速率,除了较大的聚类因子。该方案是实用的,并且在数值上,它的性能和比知名的自适应最小二乘方案的性能和更好。

This paper concerns the approximation of smooth, high-dimensional functions from limited samples using polynomials. This task lies at the heart of many applications in computational science and engineering - notably, some of those arising from parametric modelling and computational uncertainty quantification. It is common to use Monte Carlo sampling in such applications, so as not to succumb to the curse of dimensionality. However, it is well known that such a strategy is theoretically suboptimal. Specifically, there are many polynomial spaces of dimension $n$ for which the sample complexity scales log-quadratically, i.e., like $c \cdot n^2 \cdot \log(n)$ as $n \rightarrow \infty$. This well-documented phenomenon has led to a concerted effort over the last decade to design improved, and moreover, near-optimal strategies, whose sample complexities scale log-linearly, or even linearly in $n$. In this work we demonstrate that Monte Carlo is actually a perfectly good strategy in high dimensions, despite its apparent suboptimality. We first document this phenomenon empirically via a systematic set of numerical experiments. Next, we present a theoretical analysis that rigorously justifies this fact in the case of holomorphic functions of infinitely-many variables. We show that there is a least-squares approximation based on $m$ Monte Carlo samples whose error decays algebraically fast in $m/\log(m)$, with a rate that is the same as that of the best $n$-term polynomial approximation. This result is non-constructive, since it assumes knowledge of a suitable polynomial subspace in which to perform the approximation. We next present a compressed sensing-based scheme that achieves the same rate, except for a larger polylogarithmic factor. This scheme is practical, and numerically it performs as well as or better than well-known adaptive least-squares schemes.

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