Application of Symbolic Regression to Unsolved Mathematical Problems
Created by W.Langdon from
gp-bibliography.bib Revision:1.8129
- @InProceedings{Sasaki:2023:ATCON,
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author = "Yuji Sasaki and Keito Tanemura and Yuki Tokuni and
Ryohei Miyadera and Hikaru Manabe",
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booktitle = "2023 International Conference on Artificial
Intelligence and Applications (ICAIA) Alliance
Technology Conference (ATCON-1)",
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title = "Application of Symbolic Regression to Unsolved
Mathematical Problems",
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year = "2023",
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month = "21-22 " # apr,
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address = "Bangalore, India",
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keywords = "genetic algorithms, genetic programming, Games,
Rendering (computer graphics), Libraries, Artificial
intelligence, Python, Symbolic Regression,
Combinatorial Games, Chocolate games, Nim with a pass,
Grundy number",
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isbn13 = "978-1-6654-5628-9",
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DOI = "doi:10.1109/ICAIA57370.2023.10169711",
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abstract = "This study proposes a method for solving unsolved
mathematical games using symbolic regression libraries.
We aimed to demonstrate the effectiveness of genetic
programming in mathematics in rendering the process of
finding formulas more efficient. In the first part of
the study, we customised the Python symbolic regression
library gplearn by adding new features, such as
conditional branching. The library uses genetic
programming to obtain formulas from data, and we found
that the performance of the customized version was
better than that of the original. However, the user of
this library must be experienced in mathematics to set
the conditions for branching. The second part of the
study involved the creation of a Swift symbolic
regression library using genetic programming. We
implemented a new method that combines two criteria for
selecting the best formulas: the mean absolute error
and the percentage of data described by the formula
without error. This new library can discover formulas
as good as those discovered using the customized
gplearn library without requiring specialized
knowledge. In some cases, the Swift library discovered
formulas that better described the data better than the
gplearn library. The results of this study suggest the
potential for using genetic programming in mathematics
and expanding the scope of research on symbolic
regression.",
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notes = "Also known as \cite{10169711}
Graduate School of Media and Governance, Keio
University, Fujisawa City, Japan",
- }
Genetic Programming entries for
Yuji Sasaki
Keito Tanemura
Yuki Tokuni
Ryohei Miyadera
Hikaru Manabe
Citations