Publication Details
Indirectly Encoded Fitness Predictors Coevolved with Cartesian Programs
coevolution, cartesian genetic programming, fitness prediction, symbolic
regression
We investigate coevolutionary Cartesian genetic programming that coevolves
fitness predictors in order to diminish the number of target objective vector
(TOV) evaluations, needed to obtain a satisfactory solution, to reduce the
computational cost of evolution. This paper introduces the use of coevolution of
fitness predictors in CGP with a new type of indirectly encoded predictors.
Indirectly encoded predictors are operated using the CGP and provide a variable
number of TOVs used for solution evaluation during the coevolution. It is shown
in 5 symbolic regression problems that the proposed predictors are able to adapt
the size of TOVs array in response to a particular training data set.
@inproceedings{BUT119803,
author="Michaela {Drahošová} and Jiří {Hulva} and Lukáš {Sekanina}",
title="Indirectly Encoded Fitness Predictors Coevolved with Cartesian Programs",
booktitle="Genetic Programming",
year="2015",
series="Lecture Notes in Computer Science",
volume="9025",
pages="113--125",
publisher="Springer International Publishing",
address="Berlin",
doi="10.1007/978-3-319-16501-1\{_}10",
isbn="978-3-319-16500-4",
url="http://dx.doi.org/10.1007/978-3-319-16501-1_10"
}