Accelerated convergence of error quantiles using robust randomized quasi Monte Carlo methods

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Abstract

We aim to calculate an expectation μ(F)=E(F(U)) for functions F:[0,1]d↦R using a family of estimators μˆB with a budget of B evaluation points. The standard Monte Carlo method achieves a root mean squared risk of order 1/B, both for a fixed square integrable function F and for the worst-case risk over the class F of functions with ‖F‖L2≤1. Using a sequence of Randomized Quasi Monte Carlo (RQMC) methods, in contrast, we achieve faster convergence σB≪1/B for the risk σBB(F) when fixing a function F, compared to the worst-case risk which is still of order 1/B. We address the convergence of quantiles of the absolute error, namely, for a given confidence level 1−δ this is the minimal ε such that P(|μˆB(F)−μ(F)|>ε)≤δ holds. We show that a judicious choice of a robust aggregation method coupled with RQMC methods allows reaching improved convergence rates for ε depending on δ and B when fixing a function F. This study includes a review on concentration bounds for the empirical mean as well as sub-Gaussian mean estimates and is supported by numerical experiments, ranging from bounded F to heavy-tailed F(U), the latter being well suited to functions F with a singularity. The different methods we have tested are available in a Julia package.

Original languageEnglish
Article number101989
JournalJournal of Complexity
Volume92
DOIs
Publication statusPublished - 1 Feb 2026

Keywords

  • PAC bounds
  • Quasi Monte Carlo methods
  • Robust statistics

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