Paper
25 March 1998 Evolving predictors for chaotic time series
Peter J. Angeline
Author Affiliations +
Abstract
Neural networks are a popular representation for inducing single-step predictors for chaotic times series. For complex time series it is often the case that a large number of hidden units must be used to reliably acquire appropriate predictors. This paper describes an evolutionary method that evolves a class of dynamic systems with a form similar to neural networks but requiring fewer computational units. Results for experiments on two popular chaotic times series are described and the current method's performance is shown to compare favorably with using larger neural networks.
© (1998) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Peter J. Angeline "Evolving predictors for chaotic time series", Proc. SPIE 3390, Applications and Science of Computational Intelligence, (25 March 1998); https://doi.org/10.1117/12.304803
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CITATIONS
Cited by 20 scholarly publications.
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KEYWORDS
Neural networks

Chemical elements

Data modeling

Process modeling

Systems modeling

Dynamical systems

Evolutionary algorithms

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