Time Series Prediction Using Deterministic Geometric Semantic Genetic Programming
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gp-bibliography.bib Revision:1.8051
- @InProceedings{Hara:2019:SMC,
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author = "Akira Hara and Jun-ichi Kushida and
Tetsuyuki Takahama",
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title = "Time Series Prediction Using Deterministic Geometric
Semantic Genetic Programming",
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booktitle = "2019 IEEE International Conference on Systems, Man and
Cybernetics (SMC)",
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year = "2019",
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pages = "1945--1949",
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month = oct,
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/SMC.2019.8914562",
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ISSN = "2577-1655",
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abstract = "Predicting time series data is one of the most
important challenges in many different application
domains. Constructing the prediction models can be
regarded as symbolic regressions, and the model can be
optimized by Genetic Programming (GP), which is an
evolutionary automatic programming method for tree
structural programs. In the last decade,
semantics-based genetic operators have attracted much
attentions for improving search performance in the
field of GP. As one of the semantics-based GP, we have
previously proposed Deterministic Geometric Semantic GP
(D-GSGP). Crossover operations in D-GSGP generate
offspring by affine combinations of parents with the
optimal combination ratios. We have shown the
effectiveness in several benchmark functions in
symbolic regression problems. In this research, we
apply the method to a time-series forecasting problem,
sunspot number series, as more practical application.
The experimental results indicate that D-GSGP works
effectively and the acquired programs are useful for
knowledge acquisition of the application domain.",
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notes = "Also known as \cite{8914562}",
- }
Genetic Programming entries for
Akira Hara
Jun-ichi Kushida
Tetsuyuki Takahama
Citations