Determining the maximum length of logical rules in a classifier and visual comparison of results
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- @Article{CASTELLANOSGARZON:2020:MethodsX,
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author = "Jose A. Castellanos-Garzon and Ernesto Costa and
Jose Luis S. Jaimes and Juan M. Corchado",
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title = "Determining the maximum length of logical rules in a
classifier and visual comparison of results",
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journal = "MethodsX",
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volume = "7",
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pages = "100846",
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year = "2020",
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ISSN = "2215-0161",
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DOI = "doi:10.1016/j.mex.2020.100846",
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URL = "http://www.sciencedirect.com/science/article/pii/S2215016120300650",
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keywords = "genetic algorithms, genetic programming, Machine
learning, Logical rule induction, Data mining,
Supervised learning, Evolutionary computation",
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abstract = "Supervised learning problems can be faced by using a
wide variety of approaches supported in machine
learning. In recent years there has been an increasing
interest in using the evolutionary computation paradigm
as the classifier search method, helping the technique
of applied machine learning. In this context, the
knowledge representation in form of logical rules has
been one of the most accepted machine learning
approaches, because of its level of expressiveness.
This paper proposes an evolutionary framework for
rule-based classifier induction and is based on the
idea of sequential covering. We introduce genetic
programming as the search method for
classification-rules. From this approach, we have given
results on subjects as maximum rule length, number of
rules needed in a classifier and the rule intersection
problem. The experiments developed on benchmark
clinical data resulted in a methodology to follow in
the learning method evaluation. Moreover, the results
achieved compared to other methods have shown that our
proposal can be v",
- }
Genetic Programming entries for
Jose A Castellanos-Garzon
Ernesto Costa
Jose Luis S Jaimes
Juan M Corchado
Citations