Self-adjusting Associative Rules Generator for Classification : An Evolutionary Computation Approach
Created by W.Langdon from
gp-bibliography.bib Revision:1.8129
- @InProceedings{Lavangnananda:2006:ieeeMWALS,
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author = "K. Lavangnananda",
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title = "Self-adjusting Associative Rules Generator for
Classification : An Evolutionary Computation Approach",
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booktitle = "2006 IEEE Mountain Workshop on Adaptive and Learning
Systems",
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year = "2006",
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pages = "237--242",
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address = "Logan, UT, USA",
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month = "24-26 " # jul,
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publisher = "IEEE",
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keywords = "genetic algorithms, genetic programming",
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ISBN = "1-4244-0166-6",
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URL = "http://dummy/Lavangnananda_2006_ieeeMWALS.pdf",
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DOI = "doi:10.1109/SMCALS.2006.250722",
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size = "6 pages",
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abstract = "The problem of generating efficient association rules
can seen as search problem since many different sets of
rules are possible from a given set of instances. As
the application of evolutionary computation in
searching is well studied, it is possible to use
evolutionary computation in mining for efficient
association rules. In this paper, a program known as
self-adjusting associative rules generator (SARG) is
described. SARG is a data mining program which can
generate associative rules for classification. It is an
improvement of the data mining program called genetic
programming for inductive learning (GPIL). Both use
evolutionary computation in inductive learning. The
shortcoming of GPIL lies in the operations crossover
and selection. These two operations were inflexible and
not able to adjust themselves in order to select
suitable methods for the task at hand. SARG introduces
new method of crossover known as MaxToMin crossover
together with a self-adjusting reproduction. It has
been tested on several benchmark data sets available in
the public domain. Comparison between GPIL and SARG
revealed that SARG achieved better performance and was
able to classify these data sets with higher accuracy.
The paper also discusses relevant aspects of SARG and
suggests directions for future work",
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notes = "Title should have been: {"}Self-adjusting Association
Rules Generator for Classification : An Evolutionary
Computation Approach{"}
INSPEC Accession Number: 9131818
Sch. of Inf. Technol., King Mongkut's Inst. of
Technol., Bangkok;",
- }
Genetic Programming entries for
Kittichai Lavangnananda
Citations