In this paper I describe an evolutionary wavelet network to optimize the filtering of a statisticaltime series into separate contributions. The wavelet base is regarded as a neural network where thenetwork nodes are discrete wavelet transforms, the wavelon, and the network structure and parameters areselected through evolutionary techniques. With this combined approach I can separate stochastic fromstructural components within an optimized framework and finally I can perform optimized predictiveanalysis on the time series components.

Evolutionary Wavelet Networks for Statistical Time Series Analysis / Minerva, T. - In: Non linear systems and wavelet analysis / A. Kallel, A. Hassairi, C. Bulucea, N. Mastorakis. - STAMPA. - Stevens Point, Wisconsin, USA : Wseas Press, 2010. - ISBN 9789604741892. - pp. 95-100

Evolutionary Wavelet Networks for Statistical Time Series Analysis

MINERVA, Tommaso
2010

Abstract

In this paper I describe an evolutionary wavelet network to optimize the filtering of a statisticaltime series into separate contributions. The wavelet base is regarded as a neural network where thenetwork nodes are discrete wavelet transforms, the wavelon, and the network structure and parameters areselected through evolutionary techniques. With this combined approach I can separate stochastic fromstructural components within an optimized framework and finally I can perform optimized predictiveanalysis on the time series components.
2010
Non linear systems and wavelet analysis
9789604741892
Wseas Press
STATI UNITI D'AMERICA
Evolutionary Wavelet Networks for Statistical Time Series Analysis / Minerva, T. - In: Non linear systems and wavelet analysis / A. Kallel, A. Hassairi, C. Bulucea, N. Mastorakis. - STAMPA. - Stevens Point, Wisconsin, USA : Wseas Press, 2010. - ISBN 9789604741892. - pp. 95-100
Minerva, Tommaso
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/642050
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