Monte Carlo is a good sampling strategy for polynomial approximation in high dimensions
Ben Adcock, Simone Brugiapaglia

TL;DR
This paper demonstrates that Monte Carlo sampling is an effective and theoretically justified strategy for high-dimensional polynomial approximation, matching the performance of more complex methods in terms of error decay.
Contribution
It provides empirical evidence and a theoretical analysis showing Monte Carlo sampling's optimality for high-dimensional polynomial approximation of holomorphic functions.
Findings
Monte Carlo sampling achieves algebraic error decay in high dimensions.
Theoretical justification for Monte Carlo's effectiveness in approximating holomorphic functions.
A practical compressed sensing scheme matches the rate of optimal polynomial approximation.
Abstract
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 for which the sample complexity scales log-quadratically, i.e., like as . 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…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design · Mathematical Approximation and Integration · Numerical Methods and Algorithms
