Orthogonal Bootstrap: Efficient Simulation of Input Uncertainty
Methodology
2024-05-02 v2 Machine Learning
Econometrics
Statistics Theory
Machine Learning
Statistics Theory
Abstract
Bootstrap is a popular methodology for simulating input uncertainty. However, it can be computationally expensive when the number of samples is large. We propose a new approach called \textbf{Orthogonal Bootstrap} that reduces the number of required Monte Carlo replications. We decomposes the target being simulated into two parts: the \textit{non-orthogonal part} which has a closed-form result known as Infinitesimal Jackknife and the \textit{orthogonal part} which is easier to be simulated. We theoretically and numerically show that Orthogonal Bootstrap significantly reduces the computational cost of Bootstrap while improving empirical accuracy and maintaining the same width of the constructed interval.
Cite
@article{arxiv.2404.19145,
title = {Orthogonal Bootstrap: Efficient Simulation of Input Uncertainty},
author = {Kaizhao Liu and Jose Blanchet and Lexing Ying and Yiping Lu},
journal= {arXiv preprint arXiv:2404.19145},
year = {2024}
}