Evolving Intervening Variables for Response Surface Approximations
Created by W.Langdon from
gp-bibliography.bib Revision:1.8168
- @InProceedings{Sobester:2004:AIAA,
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author = "Andras Sobester and Prasanth B. Nair and
Andy J. Keane",
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title = "Evolving Intervening Variables for Response Surface
Approximations",
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booktitle = "10th AIAA/ISSMO Multidisciplinary Analysis and
Optimization Conference",
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year = "2004",
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number = "AIAA 2004-4379",
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pages = "1--12",
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month = "30-" # aug # " 1-" # sep,
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series = "{}",
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address = "Albany, New York, USA",
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keywords = "genetic algorithms, genetic programming",
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URL = "http://www.soton.ac.uk/~as7/publ/mao04.pdf",
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size = "12 pages",
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abstract = "Genetic Programming (GP) is a powerful string
processing technique based on the Darwinian paradigm of
natural selection. Although initially conceived with
the more general aim of automatically producing
computer code for complex tasks, it can also be used to
evolve symbolic expressions, provided that we have a
fitness criterion that measures the quality of an
expression. In this paper we present a GP approach for
generating functions in closed analytic form that map
the input space of a complex function approximation
problem into one where the output is more amenable to
linear regression. In other words, intervening
variables are evolved in each dimension, such that the
final approximation model has good generalization
properties and at the same time, due to its linearity,
can easily be incorporated into further calculations.
We employ least squares and cross-validation error
measures to derive the fitness function that drives the
evolutionary process. Results are presented for a
one-dimensional test problem to illustrate some of the
proposed ideas - this is followed by a more thorough
empirical study, including multi-dimensional
approximations and an engineering design problem.",
- }
Genetic Programming entries for
Andras Sobester
Prasanth B Nair
Andy J Keane
Citations