Performance Evaluation of Gene Expression Programming for Hydraulic Data Mining
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- @Article{Eldrandaly:2008:IAJIT,
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author = "Khalid Eldrandaly and Abdel-Azim Negm",
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title = "Performance Evaluation of Gene Expression Programming
for Hydraulic Data Mining",
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journal = "The International Arab Journal of Information
Technology",
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year = "2008",
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volume = "5",
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number = "2",
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pages = "126--131",
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month = apr,
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email = "khalid_eldrandaly@yahoo.com",
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keywords = "genetic algorithms, genetic programming, gene
expression programming, GEP, Data mining, multiple
linear regression, MLR, hydraulic jump.",
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URL = "http://www.ccis2k.org/iajit/PDF/vol.5,no.2/4-103.pdf",
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size = "6 pages",
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abstract = "Predication is one of the fundamental tasks of data
mining. In recent years, Artificial Intelligence
techniques are widely being used in data mining
applications where conventional statistical methods
were used such as Regression and classification. The
aim of this work is to show the applicability of Gene
Expression Programming (GEP), a recently developed AI
technique, for hydraulic data prediction and to
evaluate its performance by comparing it with Multiple
Linear Regression (MLR). Both GEP and MLR were used to
model the hydraulic jump over a roughened bed using
very large series of experimental data that contain all
the important flow and roughness parameters such as the
initial Froude number, the height of roughness ratio,
the length of roughness ratio, the initial length ratio
(from the gate) and the roughness density. The results
show that GEP is a promising AI approach for hydraulic
data prediction.",
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notes = "Information Systems Department, College of Computers,
Zagazig University, Egypt http://www.iajit.org/",
- }
Genetic Programming entries for
Khalid Aly Eldrandaly
Abdel-Azim Negm
Citations