Randomized Maximum Likelihood via High-Dimensional Bayesian Optimization

04/17/2022
by   Valentin Breaz, et al.
0

Randomized Maximum Likelihood (RML) is an approximate posterior sampling methodology, widely used in Bayesian inverse problems with complex forward models, particularly in petroleum engineering applications. The procedure involves solving a multi-objective optimization problem, which can be challenging in high-dimensions and when there are constraints on computational costs. We propose a new methodology for tackling the RML optimization problem based on the high-dimensional Bayesian optimization literature. By sharing data between the different objective functions, we are able to implement RML at a greatly reduced computational cost. We demonstrate the benefits of our methodology in comparison with the solutions obtained by alternative optimization methods on a variety of synthetic and real-world problems, including medical and fluid dynamics applications. Furthermore, we show that the samples produced by our method cover well the high-posterior density regions in all of the experiments.

READ FULL TEXT

page 8

page 13

research
09/22/2021

Multi-Objective Bayesian Optimization over High-Dimensional Search Spaces

The ability to optimize multiple competing objective functions with high...
research
08/16/2016

Fast Calculation of the Knowledge Gradient for Optimization of Deterministic Engineering Simulations

A novel efficient method for computing the Knowledge-Gradient policy for...
research
07/21/2019

High Dimensional Bayesian Optimization via Supervised Dimension Reduction

Bayesian optimization (BO) has been broadly applied to computational exp...
research
12/01/2014

Sparse Variational Bayesian Approximations for Nonlinear Inverse Problems: applications in nonlinear elastography

This paper presents an efficient Bayesian framework for solving nonlinea...
research
08/19/2022

Estimating a potential without the agony of the partition function

Estimating a Gibbs density function given a sample is an important probl...
research
03/23/2018

Bayesian Optimization with Expensive Integrands

We propose a Bayesian optimization algorithm for objective functions tha...
research
01/28/2022

Generalized statistics: applications to data inverse problems with outlier-resistance

The conventional approach to data-driven inversion framework is based on...

Please sign up or login with your details

Forgot password? Click here to reset