Comparing ensemble learning approaches in genetic programming for classification with unbalanced data
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Bhowan:2013:GECCOcomp,
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author = "Urvesh Bhowan and Mark Johnston and Mengjie Zhang",
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title = "Comparing ensemble learning approaches in genetic
programming for classification with unbalanced data",
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booktitle = "GECCO '13 Companion: Proceeding of the fifteenth
annual conference companion on Genetic and evolutionary
computation conference companion",
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year = "2013",
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editor = "Christian Blum and Enrique Alba and
Thomas Bartz-Beielstein and Daniele Loiacono and
Francisco Luna and Joern Mehnen and Gabriela Ochoa and
Mike Preuss and Emilia Tantar and Leonardo Vanneschi and
Kent McClymont and Ed Keedwell and Emma Hart and
Kevin Sim and Steven Gustafson and
Ekaterina Vladislavleva and Anne Auger and Bernd Bischl and Dimo Brockhoff and
Nikolaus Hansen and Olaf Mersmann and Petr Posik and
Heike Trautmann and Muhammad Iqbal and Kamran Shafi and
Ryan Urbanowicz and Stefan Wagner and
Michael Affenzeller and David Walker and Richard Everson and
Jonathan Fieldsend and Forrest Stonedahl and
William Rand and Stephen L. Smith and Stefano Cagnoni and
Robert M. Patton and Gisele L. Pappa and
John Woodward and Jerry Swan and Krzysztof Krawiec and
Alexandru-Adrian Tantar and Peter A. N. Bosman and
Miguel Vega-Rodriguez and Jose M. Chaves-Gonzalez and
David L. Gonzalez-Alvarez and
Sergio Santander-Jimenez and Lee Spector and Maarten Keijzer and
Kenneth Holladay and Tea Tusar and Boris Naujoks",
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isbn13 = "978-1-4503-1964-5",
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keywords = "genetic algorithms, genetic programming",
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pages = "135--136",
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month = "6-10 " # jul,
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organisation = "SIGEVO",
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address = "Amsterdam, The Netherlands",
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DOI = "doi:10.1145/2464576.2464643",
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publisher = "ACM",
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publisher_address = "New York, NY, USA",
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abstract = "This paper compares three approaches to evolving
ensembles in Genetic Programming (GP) for binary
classification with unbalanced data. The first uses
bagging with sampling, while the other two use
Pareto-based multi-objective GP (MOGP) for the
trade-off between the two (unequal) classes. In MOGP,
two ways are compared to build the ensembles: using the
evolved Pareto front alone, and using the whole evolved
population of dominated and non-dominated individuals
alike. Experiments on several benchmark (binary)
unbalanced tasks find that smaller, more diverse
ensembles chosen during ensemble selection perform best
due to better generalisation, particularly when the
combined knowledge of the whole evolved MOGP population
forms the ensemble.",
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notes = "Also known as \cite{2464643} Distributed at
GECCO-2013.",
- }
Genetic Programming entries for
Urvesh Bhowan
Mark Johnston
Mengjie Zhang
Citations