A Hybrid GP Approach for Numerically Robust Symbolic Regression
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @InProceedings{raidl:1998:hGPnrsr,
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author = "Gunther R. Raidl",
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title = "A Hybrid {GP} Approach for Numerically Robust Symbolic
Regression",
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booktitle = "Genetic Programming 1998: Proceedings of the Third
Annual Conference",
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year = "1998",
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editor = "John R. Koza and Wolfgang Banzhaf and
Kumar Chellapilla and Kalyanmoy Deb and Marco Dorigo and
David B. Fogel and Max H. Garzon and
David E. Goldberg and Hitoshi Iba and Rick Riolo",
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pages = "323--328",
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address = "University of Wisconsin, Madison, Wisconsin, USA",
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publisher_address = "San Francisco, CA, USA",
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month = "22-25 " # jul,
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publisher = "Morgan Kaufmann",
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keywords = "genetic algorithms, genetic programming, HGP",
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ISBN = "1-55860-548-7",
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URL = "http://www.ads.tuwien.ac.at/publications/bib/pdf/raidl-98c.pdf",
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size = "6 pages",
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abstract = "This article introduces a hybrid variant of genetic
programming (GP) for doing symbolic regression. Instead
of the usual interpretation of a parse tree, all
top-level terms are identified and extended by
multiplying them with locally optimized factors. These
weighted terms are then linearly combined to form the
resulting expression. When using the mean square error
as fitness function, local optimization of the factors
can be done efficiently by applying a robust variant of
the method of least squares. Furthermore, the presented
hybrid GP uses arbitrary precision arithmetic for
evaluating each solution to detect major precision
losses, numerical underflows, or overflows. A penalty
according to the lost accuracy is added to the
objective function to avoid such problems in the final
solution. Various experiments indicate that the new
hybrid GP finds numerically robust expressions with
much smaller approximation errors faster and more
reliably than traditional GP",
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notes = "GP-98",
- }
Genetic Programming entries for
Gunther R Raidl
Citations