Combination method of rough set and genetic programming
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- @Article{Hassan:2004:Kybernetes,
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author = "Yasser Hassan and Eiichiro Tazaki",
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title = "Combination method of rough set and genetic
programming",
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journal = "Kybernetes",
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year = "2004",
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volume = "33",
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number = "1",
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pages = "98--117",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "0368-492X",
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DOI = "doi:10.1108/03684920410514544",
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abstract = "A methodology for using rough set for preference
modelling in decision problem is presented in this
paper; where we will introduce a new approach for
deriving knowledge rules from database based on rough
set combined with genetic programming. Genetic
programming belongs to the most new techniques in
applications of artificial intelligence. Rough set
theory, which emerged about 20 years back, is nowadays
a rapidly developing branch of artificial intelligence
and soft computing. At the first glance, the two
methodologies that we discuss are not in common. Rough
set construct is the representation of knowledge in
terms of attributes, semantic decision rules, etc. On
the contrary, genetic programming attempts to
automatically create computer programs from a
high-level statement of the problem requirements. But,
in spite of these differences, it is interesting to try
to incorporate both the approaches into a combined
system. The challenge is to obtain as much as possible
from this association",
- }
Genetic Programming entries for
Yasser Fouad Hassan
Eiichiro Tazaki
Citations