A Comparison of Several Linear Genetic Programming Techniques
Abstract
A comparison between four Genetic Programming techniques is presented in this paper. The compared methods are Multi-Expression Programming, Gene Expression Programming, Grammatical Evolution, and Linear Genetic Programming. The comparison includes all aspects of the considered evolutionary algorithms: individual representation, fitness assignment, genetic operators, and evolutionary scheme. Several numerical experiments using five benchmarking problems are carried out. Two test problems are taken from PROBEN1 and contain real-world data. The results reveal that Multi-Expression Programming has the best overall behavior for the considered test problems, closely followed by Linear Genetic Programming.
Citation impact
- FWCI
- 15.73
- Percentile
- 100%
- References
- 16
Authors
3- EMElectronic mail address: moltean@nessie.cs.ubbcluj.ro.Corresponding
Babeș-Bolyai University
- MOMihai Oltean
Babeș-Bolyai University
- CGCrina Groşan
Topics & keywords
- Genetic programming
- Gene expression programming
- Grammatical evolution
- Linear programming
- Genetic representation
- Computer science
- Benchmarking
- Representation (politics)