Genetic algorithms as a strategy for feature selection
- 1 September 1992
- journal article
- research article
- Published by Wiley in Journal of Chemometrics
- Vol. 6 (5) , 267-281
- https://doi.org/10.1002/cem.1180060506
Abstract
Genetic algorithms have been created as an optimization strategy to be used especially when complex response surfaces do not allow the use of better‐known methods (simplex, experimental design techniques, etc.). This paper shows that these algorithms, conveniently modified, can also be a valuable tool in solving the feature selection problem. The subsets of variables selected by genetic algorithms are generally more efficient than those obtained by classical methods of feature selection, since they can produce a better result by using a lower number of features.Keywords
This publication has 7 references indexed in Scilit:
- Genetic algorithms for large-scale optimization in chemometrics: An applicationTrAC Trends in Analytical Chemistry, 1991
- Classifier systems and genetic algorithmsArtificial Intelligence, 1989
- Evolution algorithms in combinatorial optimizationParallel Computing, 1988
- Genetic Algorithms and Machine LearningMachine Learning, 1988
- Regression DiagnosticsPublished by Wiley ,1980
- Regressions by Leaps and BoundsTechnometrics, 1974
- All Possible Regressions with Less ComputationTechnometrics, 1971