Adaptive Fitness Predictors in Coevolutionary Cartesian Genetic Programming
Language English Country United States Media print-electronic
Document type Journal Article
PubMed
29863421
DOI
10.1162/evco_a_00229
Knihovny.cz E-resources
- Keywords
- Cartesian genetic programming, coevolutionary algorithms, evolutionary design, fitness prediction, image processing., symbolic regression,
- MeSH
- Algorithms * MeSH
- Biological Evolution * MeSH
- Genetic Fitness MeSH
- Humans MeSH
- Computer Simulation MeSH
- Image Processing, Computer-Assisted methods MeSH
- Signal-To-Noise Ratio MeSH
- Regression Analysis MeSH
- Software * MeSH
- Image Enhancement methods MeSH
- Computational Biology methods MeSH
- Check Tag
- Humans MeSH
- Publication type
- Journal Article MeSH
In genetic programming (GP), computer programs are often coevolved with training data subsets that are known as fitness predictors. In order to maximize performance of GP, it is important to find the most suitable parameters of coevolution, particularly the fitness predictor size. This is a very time-consuming process as the predictor size depends on a given application, and many experiments have to be performed to find its suitable size. A new method is proposed which enables us to automatically adapt the predictor and its size for a given problem and thus to reduce not only the time of evolution, but also the time needed to tune the evolutionary algorithm. The method was implemented in the context of Cartesian genetic programming and evaluated using five symbolic regression problems and three image filter design problems. In comparison with three different CGP implementations, the time required by CGP search was reduced while the quality of results remained unaffected.
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