A Personalized Association Rule Ranking Method Based on Semantic Similarity and Evolutionary Computation
Created by W.Langdon from
gp-bibliography.bib Revision:1.8110
- @InProceedings{Yang3:2008:cec,
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author = "Guangfei Yang and Kaoru Shimada and Shingo Mabu and
Kotaro Hirasawa",
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title = "A Personalized Association Rule Ranking Method Based
on Semantic Similarity and Evolutionary Computation",
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booktitle = "2008 IEEE World Congress on Computational
Intelligence",
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year = "2008",
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editor = "Jun Wang",
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pages = "487--494",
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address = "Hong Kong",
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month = "1-6 " # jun,
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organization = "IEEE Computational Intelligence Society",
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publisher = "IEEE Press",
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isbn13 = "978-1-4244-1823-7",
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file = "EC0132.pdf",
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DOI = "doi:10.1109/CEC.2008.4630842",
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abstract = "Many methods have been studied for mining association
rules efficiently. However, because these methods
usually generate a large number of rules, it is still a
heavy burden for the users to find the most interesting
ones. In this paper, we propose a novel method for
finding what the user is interested in by assigning
several keywords, like searching documents on the WWW
by search engines. We build an ontology to describe the
concepts and relationships in the research domain and
mine association rules by Genetic Network Programming
from the database where the attributes are concepts in
ontology. By considering both the semantic similarity
between the rules and the keywords, and the statistical
information like support, confidence, chi-squared
value, we could rank the rules by a new method named
RuleRank, where genetic algorithm is applied to adjust
the parameters and the optimal ranking model is built
for the user. Experiments show that our approach is
effective for the users to find what they want.",
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keywords = "genetic algorithms, genetic programming",
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notes = "WCCI 2008 - A joint meeting of the IEEE, the INNS, the
EPS and the IET.",
- }
Genetic Programming entries for
Guangfei Yang
Kaoru Shimada
Shingo Mabu
Kotaro Hirasawa
Citations