• DocumentCode
    2159581
  • Title

    PSO based Neural Networks vs. traditional statistical models for seasonal time series forecasting

  • Author

    Adhikari, Rajdeep ; Agrawal, R.K. ; Kant, L.

  • Author_Institution
    Comput. & Syst. Sci., Jawaharlal Nehru Univ., New Delhi, India
  • fYear
    2013
  • fDate
    22-23 Feb. 2013
  • Firstpage
    719
  • Lastpage
    725
  • Abstract
    Seasonality is a distinctive characteristic which is often observed in many practical time series. Artificial Neural Networks (ANNs) are a class of promising models for efficiently recognizing and forecasting seasonal patterns. In this paper, the Particle Swarm Optimization (PSO) approach is used to enhance the forecasting strengths of feedforward ANN (FANN) as well as Elman ANN (EANN) models for seasonal data. Three widely popular versions of the basic PSO algorithm, viz. Trelea-I, Trelea-II and Clerc-Type1 are considered here. The empirical analysis is conducted on three real-world seasonal time series. Results clearly show that each version of the PSO algorithm achieves notably better forecasting accuracies than the standard Backpropagation (BP) training method for both FANN and EANN models. The neural network forecasting results are also compared with those from the three traditional statistical models, viz. Seasonal Autoregressive Integrated Moving Average (SARIMA), Holt-Winters (HW) and Support Vector Machine (SVM). The comparison demonstrates that both PSO and BP based neural networks outperform SARIMA, HW and SVM models for all three time series datasets. The forecasting performances of ANNs are further improved through combining the outputs from the three PSO based models.
  • Keywords
    feedforward neural nets; forecasting theory; particle swarm optimisation; pattern recognition; statistical analysis; time series; Clerc-Type1 algorithm; EANN model; Elman ANN model; FANN; PSO-based neural networks; Trelea-I algorithm; Trelea-II algorithm; artificial neural networks; feedforward ANN; forecasting performance improvement; forecasting strengths; particle swarm optimization; seasonal data; seasonal pattern forecasting; seasonal pattern recognition; seasonal time series forecasting; traditional statistical models; Artificial neural networks; Computational modeling; Forecasting; Predictive models; Support vector machines; Time series analysis; Training; ANN; Box-Jenkins models; Elman ANN; particle swarm optimization; seasonality; time series forecasting;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Advance Computing Conference (IACC), 2013 IEEE 3rd International
  • Conference_Location
    Ghaziabad
  • Print_ISBN
    978-1-4673-4527-9
  • Type

    conf

  • DOI
    10.1109/IAdCC.2013.6514315
  • Filename
    6514315