On the Effects of Collaborators Selection and Aggregation in Cooperative Coevolution: an Experimental Analysis
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- @InProceedings{Nadizar:2023:EuroGP,
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author = "Giorgia Nadizar and Eric Medvet",
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title = "On the Effects of Collaborators Selection and
Aggregation in Cooperative Coevolution: an Experimental
Analysis",
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booktitle = "EuroGP 2023: Proceedings of the 26th European
Conference on Genetic Programming",
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year = "2023",
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month = "12-14 " # apr,
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editor = "Gisele Pappa and Mario Giacobini and Zdenek Vasicek",
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series = "LNCS",
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volume = "13986",
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publisher = "Springer Verlag",
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address = "Brno, Czech Republic",
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pages = "292--307",
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organisation = "EvoStar, Species",
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keywords = "genetic algorithms, genetic programming, Cooperative
coevolution, Collaborator selection, Fitness
aggregation, Symbolic Regression, Neuroevolution:
Poster",
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isbn13 = "978-3-031-29572-0",
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URL = "https://rdcu.be/c8U2M",
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DOI = "doi:10.1007/978-3-031-29573-7_19",
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size = "16 pages",
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abstract = "Cooperative Coevolution is a way to solve complex
optimization problems by dividing them in smaller,
simpler sub-problems. Those sub-problems are then
tackled concurrently by evolving one population of
solutions---actually, components of a larger solution,
for each of them. However, components cannot be
evaluated in isolation: in the common case of two
concurrently evolving populations, each solution of one
population must be coupled with another solution of the
other population (the collaborator) in order to compute
the fitness of the pair. Previous studies have already
shown that the way collaborators are chosen and, if
more than one is chosen, the way the resulting fitness
measures are aggregated, play a key role in determining
the success of coevolution. we perform an experimental
analysis aimed at shedding new light on the effects of
collaborators selection and aggregation. We first
propose a general scheme for cooperative coevolution of
two populations that allows to (a) use different EAs
and solution representations on the two sub-problems
and to (b) set different collaborators selection and
aggregation strategies. Second, we instantiate this
general scheme in a few variants and apply it to four
optimization problems with different degrees of
separability: two toy problems and two real prediction
problems tackled with different kinds of model
(symbolic regression and neural networks). We analyze
the outcomes in terms of (a) effectiveness and
efficiency of the optimization and (b) complexity and
generalization power of the solutions. We find that the
degree to which selection and aggregation schemes
differ strongly depends on the interaction between the
components of the solution.",
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notes = "Part of \cite{Pappa:2023:GP} EuroGP'2023 held in
conjunction with EvoCOP2023, EvoMusArt2023 and
EvoApplications2023",
- }
Genetic Programming entries for
Giorgia Nadizar
Eric Medvet
Citations