Reducing gaps in quantitative association rules: A genetic programming free-parameter algorithm
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{2014-ICAE-Gaps,
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author = "Jose Maria Luna and Jose Raul Romero and
Cristobal Romero and Sebastian Ventura",
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title = "Reducing gaps in quantitative association rules: A
genetic programming free-parameter algorithm",
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journal = "Integrated Computer-Aided Engineering",
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year = "2014",
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volume = "21",
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number = "4",
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pages = "321--337",
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month = "29 " # sep,
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keywords = "genetic algorithms, genetic programming, Quantitative
association rules, grammar guided genetic programming,
evolutionary computation, data mining",
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ISSN = "1069-2509",
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publisher = "IOS Press",
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DOI = "doi:10.3233/ICA-140467",
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size = "17 pages",
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abstract = "The extraction of useful information for decision
making is a challenge in many different domains.
Association rule mining is one of the most important
techniques in this field, discovering relationships of
interest among patterns. Despite the mining of
association rules being an area of great interest for
many researchers, the search for well-grouped
continuous values is still a challenge, discovering
rules that do not comprise patterns which represent
unnecessary ranges of values. Existing algorithms for
mining association rules in continuous domains are
mainly based on a non-deterministic search, requiring a
high number of parameters to be optimised. These
parameters hinder the mining process, and the
algorithms themselves must be known to those data
mining experts that want to use them. We therefore
present a grammar guided genetic programming algorithm
that does not require as many parameters as other
existing approaches and enables the discovery of
quantitative association rules comprising small-size
gaps. The algorithm is verified over a varied set of
data, comparing the results to other association rule
mining algorithms from several paradigms. Additionally,
some resulting rules from different paradigms are
analysed, demonstrating the effectiveness of our model
for reducing gaps in numerical features.",
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notes = "Department of Computer Science and Numerical Analysis,
University of Cordoba, Albert Einstein Building,
Rabanales Campus, Cordoba, Spain.
Department of Computer Science, Faculty of Computing
and Information Technology, King Abdulaziz University,
Saudi Arabia Kingdom",
- }
Genetic Programming entries for
Jose Maria Luna
Jose Raul Romero Salguero
Cristobal Romero Morales
Sebastian Ventura
Citations