Scaling Up Cartesian Genetic Programming through Preferential Selection of Larger Solutions
Created by W.Langdon from
gp-bibliography.bib Revision:1.8204
- @Misc{Milano:2018:arxiv,
-
author = "Nicola Milano and Stefano Nolfi",
-
title = "Scaling Up Cartesian Genetic Programming through
Preferential Selection of Larger Solutions",
-
howpublished = "arXiv",
-
year = "2018",
-
month = "22 " # oct,
-
keywords = "genetic algorithms, genetic programming, cartesian
genetic programming",
-
bibsource = "DBLP,
http://dblp.uni-trier.de/db/journals/corr/corr1810.html#abs-1810-09485",
-
URL = "http://arxiv.org/abs/1810.09485",
-
size = "14 pages",
-
abstract = "We demonstrate how efficiency of Cartesian Genetic
Programming method can be scaled up through the
preferential selection of phenotypically larger
solutions, i.e. through the preferential selection of
larger solutions among equally good solutions. The
advantage of the preferential selection of larger
solutions is validated on the six, seven and eight-bit
parity problems, on a dynamically varying problem
involving the classification of binary patterns, and on
the Paige regression problem. In all cases, the
preferential selection of larger solutions provides an
advantage in term of the performance of the evolved
solutions and in term of speed, the number of
evaluations required to evolve optimal or high-quality
solutions. The advantage provided by the preferential
selection of larger solutions can be further extended
by self-adapting the mutation rate through the
one-fifth success rule. Finally, for problems like the
Paige regression in which neutrality plays a minor
role, the advantage of the preferential selection of
larger solutions can be extended by preferring larger
solutions also among quasi-neutral alternative
candidate solutions, i.e. solutions achieving slightly
different performance.",
-
notes = "p12 'Finally, for problems like the Paige regression
in which neutrality plays a minor role, the advantage
of the preferential selection of larger solutions can
be further extended by preferring larger solutions also
among quasi-neutral alternative candidate solutions,
i.e. also among solutions achieving similar
performance.'",
- }
Genetic Programming entries for
Nicola Milano
Stefano Nolfi
Citations