Adaptively Evolving Probabilities of Genetic Operators
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- @InProceedings{Vafaee:2008:ICMLA,
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title = "Adaptively Evolving Probabilities of Genetic
Operators",
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author = "Fatemeh Vafaee and Weimin Xiao and Peter C. Nelson and
Chi Zhou",
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booktitle = "Seventh International Conference on Machine Learning
and Applications, ICMLA '08",
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year = "2008",
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month = "11-13 " # dec,
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pages = "292--299",
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address = "La Jolla, San Diego, USA",
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publisher = "IEEE",
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keywords = "genetic algorithms, genetic programming, gene
expression programming, mathematical operators,
probability adaptive method, differential evolution,
evolved evolutionary algorithm, genetic operator
probability, numerical optimization model,
supplementary mutation operator",
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DOI = "doi:10.1109/ICMLA.2008.45",
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abstract = "This work is concerned with proposing an adaptive
method to dynamically adjust genetic operator
probabilities throughout the evolutionary process. The
proposed method relies on the individual preferences of
each chromosome, rather than the global behavior of the
whole population. Hence, each individual carries its
own set of parameters, including the probabilities of
the genetic operators. The carried parameters undergo
the same evolutionary process as the carriers--the
chromosomes - do. We call this method Evolved
Evolutionary Algorithm (E2A) as it has an additional
evolutionary process to evolve control parameters.
Furthermore, E2A employs a supplementary mutation
operator (DE-mutation) which uses the previously
overlooked numerical optimization model known as the
Differential Evolution to expedite the optimization
rate of the genetic parameters. To leverage our
previous work, we used Gene Expression Programming
(GEP) as a benchmark to determine the performance of
our proposed method. Nevertheless, E2A can be easily
extended to other genetic programming variants. As the
experimental results on a wide array of regression
problems demonstrate, the E2A method reveals a faster
rate of convergence and provides fitter ultimate
solutions. However, to further expose the power of the
E2A method, we compared it to related methods using
self-adaptation previously applied to Genetic
Algorithms. Our benchmarking on the same set of
regression problems proves the supremacy of our
proposed method both in the accuracy and simplicity of
the final solutions.",
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notes = "also known as \cite{4724989}",
- }
Genetic Programming entries for
Fatemeh Vafaee
Weimin Xiao
Peter C Nelson
Chi Zhou
Citations