Competitive Environments Evolve Better Solutions for Complex Tasks
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{icga93:angeline,
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author = "Peter J. Angeline and Jordan B. Pollack",
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title = "Competitive Environments Evolve Better Solutions for
Complex Tasks",
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year = "1993",
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booktitle = "Proceedings of the 5th International Conference on
Genetic Algorithms, ICGA-93",
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editor = "Stephanie Forrest",
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publisher = "Morgan Kaufmann",
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pages = "264--270",
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month = "17-21 " # jul,
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address = "University of Illinois at Urbana-Champaign",
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publisher_address = "2929 Campus Drive, Suite 260, San Mateo, CA
94403, USA",
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keywords = "genetic algorithms, genetic programming",
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URL = "http://www.demo.cs.brandeis.edu/papers/icga5.pdf",
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URL = "http://www.demo.cs.brandeis.edu/papers/icga5.ps.gz",
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URL = "http://www.natural-selection.com/Library/1993/icga93.ps.Z",
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size = "7 pages",
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abstract = "In the typical genetic algorithm experiment, the
fitness function is constructed to be independent of
the contents of the population to provide a consistent
objective measure. Such objectivity entails significant
knowledge about the environment which suggests either
the problem has previously been solved or other
non-evolutionary techniques may be more efficient.
Furthermore, for many complex tasks an independent
fitness function is either impractical or impossible to
provide. In this paper, we demonstrate that competitive
fitness functions, i.e. fitness functions that are
dependent on the constituents of the population, can
provide a more robust training environment than
independent fitness functions. We describe three
differing methods for competitive fitness, and discuss
their respective advantages.",
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ISBN = "1-55860-299-2",
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notes = "very like thesis
One method I investigated was called competitive
fitness functions which is a fitness function that
compares performance between members of the population
to determine a ranking of individuals for reproduction.
THis obviates the need for a quantitative model of the
quality of solutions and replaces it with a more
simplistic measure of {"}x is better than y{"}. The
paper explores this concept using GLiB and appeared in
ICGA93.",
- }
Genetic Programming entries for
Peter John Angeline
Jordan B Pollack
Citations