A quick semantic artificial bee colony programming (qsABCP) for symbolic regression
Created by W.Langdon from
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- @Article{GORKEMLI:2019:IS,
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author = "Beyza Gorkemli and Dervis Karaboga",
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title = "A quick semantic artificial bee colony programming
{(qsABCP)} for symbolic regression",
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journal = "Information Sciences",
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year = "2019",
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volume = "502",
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pages = "346--362",
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keywords = "genetic algorithms, genetic programming, Artificial
bee colony programming (ABCP), Semantic ABCP, Quick
ABCP, Quick semantic ABCP, Symbolic regression",
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ISSN = "0020-0255",
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URL = "
http://www.sciencedirect.com/science/article/pii/S0020025519305900",
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DOI = "
10.1016/j.ins.2019.06.052",
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abstract = "Artificial bee colony programming (ABCP) is a novel
evolutionary computation based automatic programming
method, which uses the basic structure of artificial
bee colony (ABC) algorithm. studies were conducted to
improve the performance of ABCP and three new versions
of ABCP are introduced. One of these improvements is
related to the convergence performance of ABCP. In
order to increase the local search ability and achieve
higher quality solutions in early cycles, quick ABCP
algorithm was developed. Experimental studies validate
the enhancement of the convergence performance when the
quick ABC approach is used in ABCP. The second
improvement introduced in this paper is about providing
high locality. Using semantic similarity based
operators in the information sharing mechanism of ABCP,
semantic ABCP was developed and experiment results show
that semantic based information sharing improves
solution quality. Finally, combining these two methods,
quick semantic ABCP is introduced. Performance of these
novel methods was compared with some well known
automatic programming algorithms on literature test
problems. Additionally, ABCP based methods were used to
find approximations of the Colebrook equation for flow
friction. Simulation results show that, the proposed
methods can be used to solve symbolic regression
problems effectively",
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notes = "https://abc.erciyes.edu.tr/publ.htm
Erciyes University, Engineering Faculty, Intelligent
Systems Research Group, Kayseri, Turkey",
- }
Genetic Programming entries for
Beyza Gorkemli
Dervis Karaboga
Citations