• DocumentCode
    1705043
  • Title

    A time series prediction model using constructive neural network

  • Author

    Yegui Xiao ; Doi, Kohei ; Ikuta, Akira ; Jing Wang

  • Author_Institution
    Dept. of Manage. & Inf. Syst., Prefectural Univ. of Hiroshima, Hiroshima, Japan
  • fYear
    2012
  • Firstpage
    172
  • Lastpage
    177
  • Abstract
    In time series forecasting, the artificial neural networks (NN) such as the popular multilayer perceptron (MLP) may be used to handle both linearity and nonlinearity underlying the data generating process, but finding a right network size such as the number of hidden layers and/or hidden units is always a troublesome and time-consuming task. This paper presents a time series prediction model that is based on the use of one-hidden-layer (OHL) constructive neural networks (CNN). The CNN training begins with an initial OHL NN that only has one hidden unit. New hidden unit is added one at a time to the existing network according to the complexity of the data being modeled, which makes the CNN more capable than the fixed-size NN. A modified quick-prop algorithm is used to perform the input-side training of the CNN hidden units. The CNN-based model is applied to three types of real-world data sets to demonstrate its superiority over the AR and the fixed-size NN models.
  • Keywords
    autoregressive processes; forecasting theory; multilayer perceptrons; prediction theory; time series; CNN training; MLP; OHL CNN; artificial neural networks; data generation process; fixed-size NN; modified quick-prop algorithm; multilayer perceptron; one-hidden-layer constructive neural networks; time series forecasting; time series prediction model; Artificial neural networks; Biological system modeling; Data models; Predictive models; Time series analysis; Training;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Cybernetic Intelligent Systems (CIS), 2012 IEEE 11th International Conference on
  • Conference_Location
    Limerick
  • Type

    conf

  • DOI
    10.1109/CIS.2013.6782172
  • Filename
    6782172