Genetic Programming Applications in Chemical Sciences and Engineering
Created by W.Langdon from
gp-bibliography.bib Revision:1.8098
- @InCollection{Vyas:2015:hbgpa,
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author = "Renu Vyas and Purva Goel and Sanjeev S. Tambe",
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title = "Genetic Programming Applications in Chemical Sciences
and Engineering",
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booktitle = "Handbook of Genetic Programming Applications",
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publisher = "Springer",
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year = "2015",
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editor = "Amir H. Gandomi and Amir H. Alavi and Conor Ryan",
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chapter = "5",
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pages = "99--140",
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keywords = "genetic algorithms, genetic programming, Symbolic
regression, Classification, Chemical sciences and
engineering, Computational intelligence",
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isbn13 = "978-3-319-20882-4",
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DOI = "doi:10.1007/978-3-319-20883-1_5",
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abstract = "Genetic programming (GP) (Koza, Genetic programming: a
paradigm for genetically breeding populations of
computer programs to solve problems, Stanford
University, Stanford, 1990) was originally proposed for
automatically generating computer programs that would
perform pre-defined tasks. There exist two other
important GP applications, namely classification and
symbolic regression that are being used widely in
pattern recognition and data-driven modelling,
respectively. As compared to the classification, GP has
found more applications for its capability to
effectively perform symbolic regression (SR). Given an
input-output data set SR can search and optimize an
appropriate linear/non-linear data-fitting function and
all its parameters. The GP-based symbolic regression
(GPSR) offers an attractive avenue to extract
correlations, explore candidate models and provide
optimal solutions to the data-driven modeling problems.
Despite its novelty and effectiveness, GP, unlike
artificial neural networks and support vector
regression, has not seen an explosive growth in its
applications. Owing to the availability of feature-rich
and user-friendly software packages as also faster
computers (including parallel computing devices), there
has been a spate of research publications in recent
years exploiting the significant potential of GP for
diverse classification and modelling applications in
chemistry and related sciences and engineering.
Accordingly, this chapter provides a bird's eye-view of
the ever increasing applications of GP in the chemical
sciences and engineering with the objective of bringing
out its immense potential in solving diverse problems.
The present chapter not only focuses on the important
GP-applications but also offers guidelines to develop
optimal GP models. Additionally, a non-exclusive list
of GP software packages is provided.",
- }
Genetic Programming entries for
Renu Vyas
Purva Goel
Sanjeev S Tambe
Citations