Covariant Parsimony Pressure for Genetic Programming
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- @TechReport{CES-480,
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author = "Riccardo Poli and Nicholas F. McPhee",
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title = "Covariant Parsimony Pressure for Genetic Programming",
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institution = "Department of Computing and Electronic Systems,
University of Essex",
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year = "2008",
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number = "CES-480",
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address = "UK",
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month = jan,
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keywords = "genetic algorithms, genetic programming",
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URL = "http://www.essex.ac.uk/dces/research/publications/technicalreports/2007/CES-480.pdf",
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size = "20 pages",
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abstract = "The parsimony pressure method is perhaps the simplest
and most frequently used method to control bloat in
genetic programming. In this paper we first reconsider
the size evolution equation for genetic programming
developed in [24] and rewrite it in a form that shows
its direct relationship to Prices theorem. We then use
this new formulation to derive theoretical results that
show how to practically and optimally set the parsimony
coefficient dynamically during a run so as to achieve
complete control over the growth of the programs in a
population. Experimental results confirm the
effectiveness of the method, as we are able to tightly
control the average program size under a variety of
conditions. These include such unusual cases as
dynamically varying target sizes such that the mean
program size is allowed to grow during some phases of a
run, while being forced to shrink in others.",
- }
Genetic Programming entries for
Riccardo Poli
Nicholas Freitag McPhee
Citations