FITNESS LANDSCAPE MEASURES FOR ANALYSING THE TOPOLOGY OF THE FEASIBLE REGION OF AN OPTIMISATION PROBLEM

Fitness landscape analysis has found numerous applications in industrial engineering, such as estimating optimisation problem complexity, predicting metaheuristic performance, and automating algorithm selection. In these applications, relationships between properties of the fitness landscape and met...

Full description

Saved in:
Bibliographic Details
Published in:South African journal of industrial engineering Vol. 34; no. 3; pp. 270 - 285
Main Authors: van der Westhuyze, Nathan, van Vuuren, Jan
Format: Journal Article
Language:English
Published: Bedfordview South African Institute for Industrial Engineering 01-11-2023
The Southern African Institute for Industrial Engineering
Subjects:
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:Fitness landscape analysis has found numerous applications in industrial engineering, such as estimating optimisation problem complexity, predicting metaheuristic performance, and automating algorithm selection. In these applications, relationships between properties of the fitness landscape and metaheuristic algorithmic appropriateness are often analysed. The ability of a metaheuristic to traverse diverse areas of the feasible region is, however, typically overlooked when analysing algorithmic performance by invoking traditional measures of fitness landscape characteristics. In this paper, we propose three novel fitness landscape measures that are tailored to analyse the structure and degree of connectedness of the feasible region. These measures are related to the degree of neighbourhood feasibility, the size of the feasible region relative to that of the entire search space, and the tightness of the constraints. The significance of these measures is demonstrated in a suite of fitness-landscape analyses. When incorporated into a metaheuristic configuration machine-learning model, the measures yield accuracy improvements up to 6.4%.
ISSN:2224-7890
1012-277X
2224-7890
DOI:10.7166/34-3-2945