Evolution of learning rules for supervised tasks II: hard learning problems
Created by W.Langdon from
gp-bibliography.bib Revision:1.8187
- @TechReport{Kuscu:1995:elrst2,
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author = "Ibrahim Kuscu",
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title = "Evolution of learning rules for supervised tasks II:
hard learning problems",
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institution = "School of Cognitive and Computing Sciences, University
of Sussex",
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year = "1995",
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type = "Cognitive Science Research Paper",
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number = "395",
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address = "Falmer, Brighton, Sussex, UK",
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month = "10 " # nov,
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keywords = "genetic algorithms, genetic programming",
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URL = "ftp://ftp.cogs.susx.ac.uk/pub/reports/csrp/csrp395.ps.Z",
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abstract = "Recent experiments with a genetic-based encoding
schema are presented as a potentially powerful tool to
discover learning rules by means of evolution. The
representation used is similar to the one used in
Genetic Programming (GP) but it employs only a fixed
set of functions to solve a variety of problems. In
this paper three Monks' and parity problems are tested.
The results indicate the usefulness of the encoding
schema in discovering learning rules for hard learning
problems. The problems and future research directions
are discussed within the context of GP practices.",
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size = "18 pages",
- }
Genetic Programming entries for
Ibrahim Kuscu
Citations