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A Study on Agricultural Commodity Price Prediction Model Based on Secondary Decomposition and Long Short-Term Memory Network

Author

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  • Changxia Sun

    (College of Information and Management Science, Henan Agricultural University, Zhengzhou 450046, China)

  • Menghao Pei

    (College of Information and Management Science, Henan Agricultural University, Zhengzhou 450046, China)

  • Bo Cao

    (College of Information and Management Science, Henan Agricultural University, Zhengzhou 450046, China)

  • Saihan Chang

    (College of Information and Management Science, Henan Agricultural University, Zhengzhou 450046, China)

  • Haiping Si

    (College of Information and Management Science, Henan Agricultural University, Zhengzhou 450046, China)

Abstract

In order to address the significant prediction errors resulting from the substantial fluctuations in agricultural product prices and the non-linear features, this paper proposes a hybrid forecasting model based on variational mode decomposition (VMD), ensemble empirical mode decomposition (EEMD), and long short-term memory networks (LSTM). This combined model is referred to as the VMD–EEMD–LSTM model. Initially, the original time series of agricultural product prices undergoes decomposition using VMD to obtain a series of variational mode functions (VMFs) and a residual component with higher complexity. Subsequently, the residual component undergoes a secondary decomposition using EEMD. All components are then fed into an LSTM model for training to obtain predictions for each component. Finally, the predictions for each component are linearly combined to generate the ultimate price forecast. To validate the effectiveness of the VMD–EEMD–LSTM model, empirical analyses were conducted for one-step and multi-step forecasts using weekly price data for pork, Chinese chives, shiitake mushrooms, and cauliflower from China’s wholesale agricultural markets. The results indicate that the composite model developed in this study provides enhanced forecasting accuracy.

Suggested Citation

  • Changxia Sun & Menghao Pei & Bo Cao & Saihan Chang & Haiping Si, 2023. "A Study on Agricultural Commodity Price Prediction Model Based on Secondary Decomposition and Long Short-Term Memory Network," Agriculture, MDPI, vol. 14(1), pages 1-22, December.
  • Handle: RePEc:gam:jagris:v:14:y:2023:i:1:p:60-:d:1309442
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    References listed on IDEAS

    as
    1. Yongmei Fang & Bo Guan & Shangjuan Wu & Saeed Heravi, 2020. "Optimal forecast combination based on ensemble empirical mode decomposition for agricultural commodity futures prices," Journal of Forecasting, John Wiley & Sons, Ltd., vol. 39(6), pages 877-886, September.
    2. Bilin Shao & Maolin Li & Yu Zhao & Genqing Bian, 2019. "Nickel Price Forecast Based on the LSTM Neural Network Optimized by the Improved PSO Algorithm," Mathematical Problems in Engineering, Hindawi, vol. 2019, pages 1-15, September.
    3. Liwen Ling & Dabin Zhang & Amin W. Mugera & Shanying Chen & Qiang Xia, 2019. "A Forecast Combination Framework with Multi-Time Scale for Livestock Products’ Price Forecasting," Mathematical Problems in Engineering, Hindawi, vol. 2019, pages 1-11, October.
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