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Evolving fractal gene regulatory networks for robot control (2003)

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by Peter J. Bentley
Venue:In Proceedings of ECAL 2003
Citations:11 - 2 self
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BibTeX

@INPROCEEDINGS{Bentley03evolvingfractal,
    author = {Peter J. Bentley},
    title = {Evolving fractal gene regulatory networks for robot control},
    booktitle = {In Proceedings of ECAL 2003},
    year = {2003},
    pages = {753--762},
    publisher = {Springer-Verlag}
}

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Abstract

Abstract. Fractal proteins are a new evolvable method of mapping genotype to phenotype through a developmental process, where genes are expressed into proteins comprised of subsets of the Mandelbrot Set. The resulting network of gene and protein interactions can be designed by evolution to produce specific patterns, that in turn can be used to solve problems. Here the use of fractal gene regulatory networks for learning a robot path through a series of obstacles is described. The results indicate the ability of this system to learn regularities in solutions and automatically create and use modules. 1

Keyphrases

fractal gene regulatory network    robot control    new evolvable method    mandelbrot set    specific pattern    protein interaction    fractal protein    developmental process    robot path   

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