A Note on Monte Carlo Integration in High Dimensions

06/17/2022
by   Yanbo Tang, et al.
0

Monte Carlo integration is a commonly used technique to compute intractable integrals. However, it is typically thought to perform poorly for very high-dimensional integrals. Therefore, we examine Monte Carlo integration using techniques from high-dimensional statistics in which we allow the dimension of the integral to increase. In doing so, we derive non-asymptotic bounds for the relative and absolute error of the approximation for some general functions through concentration inequalities. We demonstrate that the scaling in the number of points sampled to guarantee a consistent estimate can vary between polynomial to exponential, depending on the function being integrated, demonstrating that the behaviour of Monte Carlo integration in high dimensions is not uniform. Through our methods we also obtain non-asymptotic confidence intervals for the Monte Carlo estimate which are valid regardless of the number of points sampled.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/23/2021

A note on concatenation of quasi-Monte Carlo and plain Monte Carlo rules in high dimensions

In this short note, we study a concatenation of quasi-Monte Carlo and pl...
research
02/20/2022

Fast high-dimensional integration using tensor networks

The design and application of regression-free tensor network representat...
research
05/22/2020

Model Evidence with Fast Tree Based Quadrature

High dimensional integration is essential to many areas of science, rang...
research
06/07/2022

Monte Carlo integration with adaptive variance reduction: an asymptotic analysis

The crude Monte Carlo approximates the integral S(f)=∫_a^b f(x) dx ...
research
10/22/2020

Sharper convergence bounds of Monte Carlo Rademacher Averages through Self-Bounding functions

We derive sharper probabilistic concentration bounds for the Monte Carlo...
research
09/16/2023

Linear Monte Carlo quadrature with optimal confidence intervals

We study the numerical integration of functions from isotropic Sobolev s...
research
07/16/2021

Bootstrapping Through Discrete Convolutional Methods

Bootstrapping was designed to randomly resample data from a fixed sample...

Please sign up or login with your details

Forgot password? Click here to reset