Learning Discriminant Functions based on Genetic Programming and Rough Sets
Created by W.Langdon from
gp-bibliography.bib Revision:1.8129
- @Article{DBLP:journals/mvl/ChienYH11,
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author = "Been-Chian Chien and Jui-Hsiang Yang and
Tzung-Pei Hong",
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title = "Learning Discriminant Functions based on Genetic
Programming and Rough Sets",
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journal = "Multiple-Valued Logic and Soft Computing",
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year = "2011",
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volume = "17",
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number = "2-3",
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pages = "135--155",
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keywords = "genetic algorithms, genetic programming, Machine
learning, discriminant function, classification, rough
sets.",
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ISSN = "1542-3980",
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URL = "http://www.oldcitypublishing.com/journals/mvlsc-home/mvlsc-issue-contents/mvlsc-volume-17-number-2-3-2011/mvlsc-17-2-3-p-135-155/",
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broken = "http://www.oldcitypublishing.com/MVLSC/MVLSCabstracts/MVLSC17.2-3abstracts/MVLSCv17n2-3p135-155Chien.html",
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broken = "http://www.oldcitypublishing.com/MVLSC/MVLSCcontents/MVLSCv17n2-3contents.html",
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size = "21 pages",
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abstract = "Supervised learning based on genetic programming can
find different classification models including decision
trees, classification rules and discriminant functions.
The previous researches have shown that the classifiers
learnt by GP have high precision in many application
domains. However, nominal data cannot be handled and
calculated by the model of using discriminant
functions. In this paper, we present a scheme based on
rough set theory and genetic programming to learn
discriminant functions from general data containing
both nominal and numerical attributes. The proposed
scheme first transforms the nominal data into numerical
values by applying the technique of rough sets. Then,
genetic programming is used to learn discriminant
functions. The conflict problem among discriminant
functions is solved by an effective conflict resolution
method based on the distance-based fitness function.
The experimental results show that the classifiers
generated by the proposed scheme using GP are effective
on nominal data in comparison with C4.5, CBA, and
NB-based classifiers.",
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notes = "Oct 2016 oldcitypublishing.com/MVLSC/ in a mess but
article on there somewhere...",
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bibsource = "DBLP, http://dblp.uni-trier.de",
- }
Genetic Programming entries for
Been-Chian Chien
Jui-Hsiang Yang
Tzung-Pei Hong
Citations