4.3 Article

Combining LSTM Network Ensemble via Adaptive Weighting for Improved Time Series Forecasting

期刊

MATHEMATICAL PROBLEMS IN ENGINEERING
卷 2018, 期 -, 页码 -

出版社

HINDAWI LTD
DOI: 10.1155/2018/2470171

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资金

  1. National Research Foundation of Korea (NRF) - Ministry of Science and ICT [NRF-2017R1C1B1008646]
  2. Hankuk University of Foreign Studies Research Fund
  3. National Research Foundation of Korea (NRF) - Ministry of Education [2015R1D1A1A01057420]

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Time series forecasting is essential for various engineering applications in finance, geology, and information technology, etc. Long Short-Term Memory (LSTM) networks are nowadays gaining renewed interest and they are replacing many practical implementations of the time series forecasting systems. This paper presents a novel LSTM ensemble forecasting algorithm that effectively combines multiple forecast (prediction) results from a set of individual LSTM networks. The main advantages of our LSTM ensemble method over other state-of-the-art ensemble techniques are summarized as follows: (1) we develop a novel way of dynamically adjusting the combining weights that are used for combining multiple LSTM models to produce the composite prediction output; for this, our method is devised for updating combining weights at each time step in an adaptive and recursive way by using both past prediction errors and forgetting weight factor; (2) our method is capable of well capturing nonlinear statistical properties in the time series, which considerably improves the forecasting accuracy; (3) our method is straightforward to implement and computationally efficient when it comes to runtime performance because it does not require the complex optimization in the process of finding combining weights. Comparative experiments demonstrate that our proposed LSTM ensemble method achieves state-of-the-art forecasting performance on four real-life time series datasets publicly available.

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