A New Method for Simplifying Algebraic Expressions in Genetic Programming Called Equivalent Decision Simplification
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- @InProceedings{Mori:2009:dcaibscaal,
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title = "A New Method for Simplifying Algebraic Expressions in
Genetic Programming Called Equivalent Decision
Simplification",
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author = "Naoki Mori and Bob McKay and Nguyen Xuan Hoai and
Daryl Essam and Saori Takeuchi",
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booktitle = "Distributed Computing, Artificial Intelligence,
Bioinformatics, Soft Computing, and Ambient Assisted
Living",
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year = "2009",
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editor = "Sigeru Omatu and Miguel P. Rocha and Jose Bravo and
Florentino Fernandez and Emilio Corchado and
Andres Bustillo and Juan M. Corchado",
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volume = "5518",
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series = "Lecture Notes in Computer Science",
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pages = "171--178",
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address = "Salamanca, Spain",
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month = jun # " 10-12,",
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publisher = "Springer",
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note = "10th International Work-Conference on Artificial
Neural Networks, IWANN 2009 Workshops",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-3-642-02480-1",
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DOI = "doi:10.1007/978-3-642-02481-8_24",
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abstract = "Symbolic Regression is one of the most important
applications of Genetic Programming, but these
applications suffer from one of the key issues in
Genetic Programming, namely bloat - the uncontrolled
growth of ineffective code segments, which do not
contribute to the value of the function evolved, but
complicate the evolutionary proces, and at minimum
greatly increase the cost of evaluation. For a variety
of reasons, reliable techniques to remove bloat are
highly desirable - to simplify the solutions generated
at the end of runs, so that there is some chance of
understanding them, to permit systematic study of the
evolution of the effective core of the genotype, or
even to perform simplification of expressions during
the course of a run. This paper introduces an
alternative approach, Equivalent Decision
Simplification, in which subtrees are evaluated over
the set of regression points; if the subtrees evaluate
to the same values as known simple subtrees, they are
replaced. The effectiveness of the proposed method is
confirmed by computer simulation taking simple Symbolic
Regression problems as examples.",
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notes = "see also \cite{journals/jaciii/MoriMHET09} (23) Osaka
Prefecture University, Osaka, Japan (24) Structural
Complexity Laboratory, Seoul National University,
Seoul, Korea (25) School of Information Technology and
Elec. Eng., University of New South Wales ADFA,
Canberra, Australia (26) Mitsubishi Electric
Corporation, Tokyo, Japan",
- }
Genetic Programming entries for
Naoki Mori
R I (Bob) McKay
Nguyen Xuan Hoai
Daryl Essam
Saori Takeuchi
Citations