• DocumentCode
    189155
  • Title

    Stock Closing Price Forecasting Using Ensembles of Constructive Neural Networks

  • Author

    Joao, R.S. ; Guidoni, T.F. ; Bertini, J.R. ; Nicoletti, M.C. ; Artero, A.O.

  • Author_Institution
    DC-UFSCar, Sao Carlos, Brazil
  • fYear
    2014
  • fDate
    18-22 Oct. 2014
  • Firstpage
    109
  • Lastpage
    114
  • Abstract
    Efficient automatic systems which continuously learn over long periods of time, and manage to evolve its knowledge, by discarding obsolete parts of it and acquiring new ones to reflect recent data, are difficult to be constructed. This paper addresses neural network (NN) learning in non-stationary environments related to financial markets, aiming at forecasting stock closing price. To face up this dynamic scenario, an efficient NN model is required. Therefore, Constructive Neural Networks (CoNN) were employed due to its self-adaptation capability, in contrast to regular NN which demands parameter adjustment. This paper investigates a possible ensemble organization, composed by NN´s trained with the Cascade Correlation CoNN algorithm. An ensemble is an effective approach to non-stationary learning because it provides pre-defined rules that enable new learners - with new knowledge - to take part of the ensemble along data stream processing. Results obtained with data stream related with four different stocks are then analysed and favorably compared with those obtained with the traditional MLP NNs, trained with Backpropagation.
  • Keywords
    forecasting theory; neural nets; pricing; self-adjusting systems; stock markets; MLP NN; NN learning; NN model; automatic systems; backpropagation; cascade correlation CoNN algorithm; constructive neural networks; data stream processing; ensemble organization; financial markets; neural network learning; nonstationary learning; self-adaptation capability; stock closing price forecasting; Artificial neural networks; Correlation; Neurons; Standards; Stock markets; Training; Backpropagation; Cascade Correlation; constructive neural networks; ensemble; learning in non-stationary environments; temporal data mining;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Intelligent Systems (BRACIS), 2014 Brazilian Conference on
  • Conference_Location
    Sao Paulo
  • Type

    conf

  • DOI
    10.1109/BRACIS.2014.30
  • Filename
    6984816