MEPAR-miner: Multi-expression programming for classification rule mining
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- @Article{Baykasoglu2007767,
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author = "Adil Baykasoglu and Lale Ozbakir",
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title = "MEPAR-miner: Multi-expression programming for
classification rule mining",
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journal = "European Journal of Operational Research",
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volume = "183",
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number = "2",
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pages = "767--784",
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year = "2007",
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ISSN = "0377-2217",
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DOI = "DOI:10.1016/j.ejor.2006.10.015",
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URL = "http://www.sciencedirect.com/science/article/B6VCT-4MJS038-M/2/f780e675b2900eb28473dcbf6cfa03fb",
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keywords = "genetic algorithms, genetic programming, Data mining,
Classification rules, Multi-expression programming,
Evolutionary programming",
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abstract = "Classification and rule induction are two important
tasks to extract knowledge from data. In rule
induction, the representation of knowledge is defined
as IF-THEN rules which are easily understandable and
applicable by problem-domain experts. In this paper, a
new chromosome representation and solution technique
based on Multi-Expression Programming (MEP) which is
named as MEPAR-miner (Multi-Expression Programming for
Association Rule Mining) for rule induction is
proposed. Multi-Expression Programming (MEP) is a
relatively new technique in evolutionary programming
that is first introduced in 2002 by Oltean and
Dumitrescu. MEP uses linear chromosome structure. In
MEP, multiple logical expressions which have different
sizes are used to represent different logical rules.
MEP expressions can be encoded and implemented in a
flexible and efficient manner. MEP is generally applied
to prediction problems; in this paper a new algorithm
is presented which enables MEP to discover
classification rules. The performance of the developed
algorithm is tested on nine publicly available binary
and n-ary classification data sets. Extensive
experiments are performed to demonstrate that
MEPAR-miner can discover effective classification rules
that are as good as (or better than) the ones obtained
by the traditional rule induction methods. It is also
shown that effective gene encoding structure directly
improves the predictive accuracy of logical IF-THEN
rules.",
- }
Genetic Programming entries for
Adil Baykasoglu
Lale Ozbakir
Citations