Locality in Continuous Fitness-Valued Cases and Genetic Programming Difficulty
Created by W.Langdon from
gp-bibliography.bib Revision:1.8129
- @InProceedings{Galvan:2012:evolve,
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author = "Edgar Galvan and Leonardo Trujillo and
James McDermott and Ahmed Kattan",
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title = "Locality in Continuous Fitness-Valued Cases and
Genetic Programming Difficulty",
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booktitle = "EVOLVE - A Bridge between Probability, Set Oriented
Numerics, and Evolutionary Computation {II}",
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year = "2012",
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editor = "Oliver Schuetze and Carlos A. {Coello Coello} and
Alexandru-Adrian Tantar and Emilia Tantar and
Pascal Bouvry and Pierre {Del Moral} and Pierrick Legrand",
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volume = "175",
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series = "Advances in Intelligent Systems and Computing",
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pages = "41--56",
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address = "Mexico City, Mexico",
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month = aug # " 7-9",
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publisher = "Springer",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-3-642-31519-0",
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DOI = "doi:10.1007/978-3-642-31519-0_3",
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abstract = "It is commonly accepted that a mapping is local if it
preserves neighbourhood. In Evolutionary Computation,
locality is generally described as the property that
neighbouring genotypes correspond to neighbouring
phenotypes. Locality has been classified in one of two
categories: high and low locality. It is said that a
representation has high locality if most genotypic
neighbours correspond to phenotypic neighbours. The
opposite is true for a representation that has low
locality. It is argued that a representation with high
locality performs better in evolutionary search
compared to a representation that has low locality. In
this work, we explore, for the first time, a study on
Genetic Programming (GP) locality in continuous fitness
valued cases. For this, we extended the original
definition of locality (first defined and used in
Genetic Algorithms using bitstrings) from
genotype-phenotype mapping to the genotype-fitness
mapping. Then, we defined three possible variants of
locality in GP regarding neighbourhood. The
experimental tests presented here use a set of symbolic
regression problems, two different encoding and two
different mutation operators. We show how locality can
be studied in this type of scenarios (continuous
fitness-valued cases) and that locality can
successfully been used as a performance prediction
tool.",
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notes = "EVOLVE-2012",
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affiliation = "Distributed Systems Group, School of Computer Science
and Statistics, Trinity College, Dublin, Ireland",
- }
Genetic Programming entries for
Edgar Galvan Lopez
Leonardo Trujillo
James McDermott
Ahmed Kattan
Citations