Multilevel Bayesian Quadrature

10/15/2022
by   Kaiyu Li, et al.
0

Multilevel Monte Carlo is a key tool for approximating integrals involving expensive scientific models. The idea is to use approximations of the integrand to construct an estimator with improved accuracy over classical Monte Carlo. We propose to further enhance multilevel Monte Carlo through Bayesian surrogate models of the integrand, focusing on Gaussian process models and the associated Bayesian quadrature estimators. We show using both theory and numerical experiments that our approach can lead to significant improvements in accuracy when the integrand is expensive and smooth, and when the dimensionality is small or moderate. We conclude the paper with a case study illustrating the potential impact of our method in landslide-generated tsunami modelling, where the cost of each integrand evaluation is typically too large for operational settings.

READ FULL TEXT
research
11/05/2021

On the effective dimension and multilevel Monte Carlo

I consider the problem of integrating a function f over the d-dimensiona...
research
05/22/2023

Multilevel Control Functional

Control variates are variance reduction techniques for Monte Carlo estim...
research
03/07/2022

Multilevel Monte Carlo with Surrogate Models for Resource Adequacy Assessment

Monte Carlo simulation is often used for the reliability assessment of p...
research
07/19/2021

Adaptive Multilevel Monte Carlo for Probabilities

We consider the numerical approximation of ℙ[G∈Ω] where the d-dimensiona...
research
02/17/2021

Multilevel Monte Carlo learning

In this work, we study the approximation of expected values of functiona...
research
12/22/2022

Scaffolding Generation using a 3D Physarum Polycephalum Simulation

In this demo, we present a novel technique for approximating topological...
research
06/23/2023

Multilevel Monte Carlo methods for the Grad-Shafranov free boundary problem

The equilibrium configuration of a plasma in an axially symmetric reacto...

Please sign up or login with your details

Forgot password? Click here to reset