Describing Quantum-Inspired Linear Genetic Programming from Symbolic Regression Problems
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Dias:2012:CEC,
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title = "Describing Quantum-Inspired Linear Genetic Programming
from Symbolic Regression Problems",
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author = "Douglas Dias and Marco Aurelio Pacheco",
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pages = "907--914",
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booktitle = "Proceedings of the 2012 IEEE Congress on Evolutionary
Computation",
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year = "2012",
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editor = "Xiaodong Li",
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month = "10-15 " # jun,
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DOI = "doi:10.1109/CEC.2012.6256634",
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address = "Brisbane, Australia",
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ISBN = "0-7803-8515-2",
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keywords = "genetic algorithms, genetic programming, Quantum
Computing and Evolutionary Computation, Estimation of
distribution algorithms",
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abstract = "Quantum-inspired evolutionary algorithms
(QIEAs)exploit principles of quantum mechanics to
improve the performance of classical evolutionary
algorithms. This paper describes the latest version of
a QIEA model (Quantum-Inspired Linear Genetic
Programming, QILGP) to evolve machine code programs.
QILGP is inspired on multilevel quantum systems and its
operation is based on quantum individuals, which
represent a superposition of all programs of search
space (solutions). Symbolic regression problems and the
current more efficient model to evolve machine code
(AIMGP) are used in comparative tests, which aim to
evaluate the performance impact of introducing demes
(subpopulations) and a limited migration strategy in
this version of QILGP. It outperforms AIMGP by
obtaining better solutions with fewer parameters and
operators. The performance improvement achieved by this
latest version of QILGP encourages its ongoing and
future enhancements. Thus, this paper concludes that
the quantum inspiration paradigm can be a competitive
approach to evolve programs more efficiently.",
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notes = "WCCI 2012. CEC 2012 - A joint meeting of the IEEE, the
EPS and the IET.",
- }
Genetic Programming entries for
Douglas Mota Dias
Marco Aurelio Cavalcanti Pacheco
Citations