Simultaneous Discovery of Reusable Detectors and Subroutines Using Genetic Programming   [GP]

by

Koza, J., R.

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Info: Proceedings of the 5th International Conference on Genetic Algorithms, ICGA-93 (Conference proceedings), 1993, p. 295-302
Keywords:genetic algorithms, genetic programming
Notes:
Comparison of GP and GP+Automatic Function definition for San Mateo trail ants, finds improvement of 1:2 in number of fitness cases required and 21% reduction is size of eventual s-expressions. NO CASE made that either cases are using optimal parameters.
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BibTex:
@InProceedings{koza:adf,
  author =       "John R. Koza",
  title =        "Simultaneous Discovery of Reusable Detectors and
                 Subroutines Using Genetic Programming",
  editor =       "Stephanie Forrest",
  publisher_address = "San Mateo, CA, USA",
  year =         "1993",
  booktitle =    "Proceedings of the 5th International Conference on
                 Genetic Algorithms, ICGA-93",
  publisher =    "Morgan Kaufmann",
  size =         "8 pages",
  pages =        "295--302",
  address =      "University of Illinois at Urbana-Champaign",
  month =        "17-21 " # jul,
  keywords =     "genetic algorithms, genetic programming",
  notes =        "Comparison of GP and GP+Automatic Function definition
                 for San Mateo trail ants, finds improvement of 1:2 in
                 number of fitness cases required and 21% reduction is
                 size of eventual s-expressions. NO CASE made that
                 either cases are using optimal parameters.",
}