A comparison of genetic programming representations for binary data classification
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gp-bibliography.bib Revision:1.8204
- @InProceedings{Dufourq:2013:WICTa,
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author = "Emmanuel Dufourq and Nelishia Pillay",
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booktitle = "2013 Third World Congress on Information and
Communication Technologies (WICT)",
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title = "A comparison of genetic programming representations
for binary data classification",
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year = "2013",
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pages = "134--140",
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abstract = "The choice of which representation to use when
applying genetic programming (GP) to a problem is
vital. Certain representations perform better than
others and thus they should be selected wisely. This
paper compares the three most commonly used GP
representations for binary data classification
problems, namely arithmetic trees, logical trees, and
decision trees. Several different function sets were
tested to determine which functions are more useful.
The different representations were tested on eight data
sets with different characteristics and the findings
show that all three representations perform similarly
in terms of classification accuracy. Decision trees
obtained the highest training accuracy and logical
trees obtained the highest test accuracy. In the
context of GP and binary data classification the
findings of this study show that any of the three
representations can be used and a similar performance
will be achieved. For certain data sets the arithmetic
trees performed the best whereas the logical trees did
not, and for the remaining data sets the logical tree
performed best whereas the arithmetic tree did not.",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/WICT.2013.7113124",
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month = dec,
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notes = "Also known as \cite{7113124}",
- }
Genetic Programming entries for
Emmanuel Dufourq
Nelishia Pillay
Citations