On the use of multi-objective evolutionary algorithms for the induction of fuzzy classification rule systems
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- @Article{Setzkorn:2005:BioSystems,
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author = "Christian Setzkorn and Ray C. Paton",
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title = "On the use of multi-objective evolutionary algorithms
for the induction of fuzzy classification rule
systems",
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journal = "BioSystems",
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year = "2005",
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volume = "81",
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number = "2",
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pages = "101--112",
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month = aug,
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keywords = "genetic algorithms, genetic programming, Supervised
classification, Multi-objective evolutionary
algorithms, Fuzzy classification rule systems",
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DOI = "doi:10.1016/j.biosystems.2005.02.003",
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abstract = "Extracting comprehensible and general classifiers from
data in the form of rule systems is an important task
in many problem domains. This study investigates the
utility of a multi-objective evolutionary algorithm
(MOEA) for this task. Multi-objective evolutionary
algorithms are capable of finding several trade-off
solutions between different objectives in a single run.
In the context of the present study, the objectives to
be optimised are the complexity of the rule systems,
and their fit to the data. Complex rule systems are
required to fit the data well. However, overly complex
rule systems often generalise poorly on new data. In
addition they tend to be incomprehensible. It is,
therefore, important to obtain trade-off solutions that
achieve the best possible fit to the data with the
lowest possible complexity. The rule systems produced
by the proposed multi-objective evolutionary algorithm
are compared with those produced by several other
existing approaches for a number of benchmark datasets.
It is shown that the algorithm produces less complex
classifiers that perform well on unseen data.",
- }
Genetic Programming entries for
Christian Setzkorn
Ray C Paton
Citations