AbCD: A Component-wise Adjustable Framework for Dynamic Optimization Problems
October 09, 2023 ยท Declared Dead ยท ๐ GECCO Companion
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Authors
Alexandre Mascarenhas, Yuri Lavinas, Claus Aranha
arXiv ID
2310.05505
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.SE
Citations
0
Venue
GECCO Companion
Last Checked
3 months ago
Abstract
Dynamic Optimization Problems (DOPs) are characterized by changes in the fitness landscape that can occur at any time and are common in real world applications. The main issues to be considered include detecting the change in the fitness landscape and reacting in accord. Over the years, several evolutionary algorithms have been proposed to take into account this characteristic during the optimization process. However, the number of available tools or open source codebases for these approaches is limited, making reproducibility and extensive experimentation difficult. To solve this, we developed a component-oriented framework for DOPs called Adjustable Components for Dynamic Problems (AbCD), inspired by similar works in the Multiobjective static domain. Using this framework, we investigate components that were proposed in several popular DOP algorithms. Our experiments show that the performance of these components depends on the problem and the selected components used in a configuration, which differs from the results reported in the literature. Using irace, we demonstrate how this framework can automatically generate DOP algorithm configurations that take into account the characteristics of the problem to be solved. Our results highlight existing problems in the DOP field that need to be addressed in the future development of algorithms and components.
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