Adaptive Evolution Strategy for Symbolic Regression
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- @InProceedings{Rimcharoen:2023:CCET,
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author = "Sunisa Rimcharoen and Nutthanon Leelathakul",
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booktitle = "2023 IEEE 6th International Conference on Computer and
Communication Engineering Technology (CCET)",
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title = "Adaptive Evolution Strategy for Symbolic Regression",
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year = "2023",
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pages = "38--42",
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month = aug,
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keywords = "genetic algorithms, genetic programming, Adaptation
models, Adaptive systems, Computational modelling,
Search problems, Complex systems, Optimisation,
Evolution Strategy, Symbolic Regression",
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ISSN = "2836-5992",
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DOI = "doi:10.1109/CCET59170.2023.10335139",
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abstract = "This paper presents an adaptive evolutionary strategy
that combines a genetic algorithm with an evolution
strategy to solve symbolic regression problems.
Symbolic regression aims to determine a regression
model. Although genetic programming has been widely
used to solve this problem in the past, it has to
choose coefficients from a set of randomly selected
constants, which prohibits gradual searching towards
optimal or near optimal coefficients. To address this
limitation, the proposed technique leverages the
strengths of an evolution strategy in evolving
coefficients and a genetic algorithm in evolving the
rest of functional forms. In each learning step, the
evolution strategy gradually adjusts the values of
coefficients based on fitness values. Experimental
results on symbolic regression problems demonstrate
that the proposed technique outperforms traditional
genetic programming, with statistically significant
improvement demonstrated through a hypothesis test.
With 95percent confidence, the latter incurs the
average error 1.81 times that of our proposed method.",
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notes = "Also known as \cite{10335139}",
- }
Genetic Programming entries for
Sunisa Rimcharoen
Nutthanon Leelathakul
Citations