Wavelet-Network based on L1-Norm minimisation for learning chaotic time series
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Published:2005-12-01
Issue:03
Volume:3
Page:
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ISSN:2448-6736
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Container-title:Journal of Applied Research and Technology
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language:
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Short-container-title:JART
Author:
Alarcon-Aquino V.,Garcia-Treviño E. S.,Rosas-Romero R.,Ramirez-Cruz J. F.,Guerrero-Ojeda L. G.,Rodriguez- Asomoza J.
Abstract
This paper presents a wavelet-neural network based on the L1-norm minimisation for learning chaotic time series. The proposed approach, which is based on multi-resolution analysis, uses wavelets as activation functions in the hidden layer of the wavelet-network. We propose using the L1-norm, as opposed to the L2-norm, due to the wellknown fact that the L1-norm is superior to the L2-norm criterion when the signal has heavy tailed distributions or outliers. A comparison of the proposed approach with previous reported schemes using a time series benchmark is presented. Simulation results show that the proposed wavelet network based on the L1-norm performs better than the standard back-propagation network and the wavelet-network based on the traditional L2-norm when applied to synthetic data.
Publisher
Universidad Nacional Autonoma de Mexico
Subject
General Engineering
Cited by
1 articles.
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