A General Stochastic Algorithmic Framework for Minimizing Expensive Black Box Objective Functions Based on Surrogate Models and Sensitivity Analysis

10/23/2014
by   Yilun Wang, et al.
0

We are focusing on bound constrained global optimization problems, whose objective functions are computationally expensive black-box functions and have multiple local minima. The recently popular Metric Stochastic Response Surface (MSRS) algorithm proposed by Regis2007SRBF based on adaptive or sequential learning based on response surfaces is revisited and further extended for better performance in case of higher dimensional problems. Specifically, we propose a new way to generate the candidate points which the next function evaluation point is picked from according to the metric criteria, based on a new definition of distance, and prove the global convergence of the corresponding. Correspondingly, a more adaptive implementation of MSRS, named "SO-SA", is presented. "SO-SA" is is more likely to perturb those most sensitive coordinates when generating the candidate points, instead of perturbing all coordinates simultaneously. Numerical experiments on both synthetic problems and real problems demonstrate the advantages of our new algorithm, compared with many state of the art alternatives.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/27/2014

Sensitivity Analysis for Computationally Expensive Models using Optimization and Objective-oriented Surrogate Approximations

In this paper, we focus on developing efficient sensitivity analysis met...
research
12/29/2019

DEFT-FUNNEL: an open-source global optimization solver for constrained grey-box and black-box problems

The fast-growing need for grey-box and black-box optimization methods fo...
research
06/08/2021

EXPObench: Benchmarking Surrogate-based Optimisation Algorithms on Expensive Black-box Functions

Surrogate algorithms such as Bayesian optimisation are especially design...
research
04/19/2017

The True Destination of EGO is Multi-local Optimization

Efficient global optimization is a popular algorithm for the optimizatio...
research
11/05/2022

A Data-Driven Evolutionary Transfer Optimization for Expensive Problems in Dynamic Environments

Many real-world problems are usually computationally costly and the obje...
research
10/21/2020

Batch Sequential Adaptive Designs for Global Optimization

Compared with the fixed-run designs, the sequential adaptive designs (SA...
research
11/06/2019

High-dimensional Black-box Optimization Under Uncertainty

Limited informative data remains the primary challenge for optimization ...

Please sign up or login with your details

Forgot password? Click here to reset