Information integration and red queen dynamics in coevolutionary optimization
Publication date
2001-01-01
Authors
Pagie, L.
Hogeweg, P.
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Document Type
Preprint
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Abstract
Abstract- Coevolution has been used as optimization technique
both successfully and unsuccessfully. Successful optimization
shows integration of information at the individual
level over many fitness evaluation events and over
many generations. Alternative outcomes of the evolutionary
process, e.g. red queen dynamics or speciation,
prevent such integration. Why coevolution leads to integration
of information or to alternative evolutionary outcomes
is generally unclear.
We study coevolutionary optimization of the density
classification task in cellular automata in a spatially explicit,
two-species model. We find optimization at the individual
level, i.e. evolution of cellular automata that are
good density classifiers. However, when we globally mix
the populations, which prevents the formation of spatial
patterns, we find typical red queen dynamics in which cellular
automata classify all cases to a single density class
regardless their actual density. Thus, we get different outcomes
of the evolutionary process dependent on a small
change in the model. We compare the two processes leading
to the different outcomes in terms of the diversity of
the two populations at the level of the genotype and at the
level of the phenotype.