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A Novel Hybridization of ARIMA, ANN, and K-Means for Time Series Forecasting

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  • Warut Pannakkong

    (School of Knowledge Science, Japan Advanced Institute of Science and Technology, Nomi, Japan)

  • Van-Hai Pham

    (Pacific Ocean University, Nha Trang, Vietnam)

  • Van-Nam Huynh

    (School of Knowledge Science, Japan Advanced Institute of Science and Technology, Nomi, Japan)

Abstract

This article aims to propose a novel hybrid forecasting model involving autoregressive integrated moving average (ARIMA), artificial neural networks (ANNs) and k-means clustering. The single models and k-means clustering are used to build the hybrid forecasting models in different levels of complexity (i.e. ARIMA; hybrid model of ARIMA and ANNs; and hybrid model of k-means, ARIMA, and ANN). To obtain the final forecasting value, the forecasted values of these three models are combined with the weights generated from the discount mean square forecast error (DMSFE) method. The proposed model is applied to three well-known data sets: Wolf's sunspot, Canadian lynx and the exchange rate (British pound to US dollar) to evaluate the prediction capability in three measures (i.e. MSE, MAE, and MAPE). In addition, the prediction performance of the proposed model is compared to ARIMA; ANNs; Khashei and Bijari's model; and the hybrid model of k-means, ARIMA, and ANN. The obtained results show that the proposed model gives the best performance in MSE, MAE, and MAPE for all three data sets.

Suggested Citation

  • Warut Pannakkong & Van-Hai Pham & Van-Nam Huynh, 2017. "A Novel Hybridization of ARIMA, ANN, and K-Means for Time Series Forecasting," International Journal of Knowledge and Systems Science (IJKSS), IGI Global, vol. 8(4), pages 30-53, October.
  • Handle: RePEc:igg:jkss00:v:8:y:2017:i:4:p:30-53
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    Cited by:

    1. Nghia Chu & Binh Dao & Nga Pham & Huy Nguyen & Hien Tran, 2022. "Predicting Mutual Funds' Performance using Deep Learning and Ensemble Techniques," Papers 2209.09649, arXiv.org, revised Jul 2023.

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