4.5 Article

Stock index prediction based on wavelet transform and FCD-MLGRU

Journal

JOURNAL OF FORECASTING
Volume 39, Issue 8, Pages 1229-1237

Publisher

WILEY
DOI: 10.1002/for.2682

Keywords

ARIMA; Deep learning; Filter cycle decomposition; Stock index prediction; Wavelet transform

Funding

  1. National Social Science Fund of China [19CJL028]

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With the development of artificial intelligence, deep learning is widely used in the field of nonlinear time series forecasting. It is proved in practice that deep learning models have higher forecasting accuracy compared with traditional linear econometric models and machine learning models. With the purpose of further improving forecasting accuracy of financial time series, we propose the WT-FCD-MLGRU model, which is the combination of wavelet transform, filter cycle decomposition and multilag neural networks. Four major stock indices are chosen to test the forecasting performance among traditional econometric model, machine learning model and deep learning models. According to the result of empirical analysis, deep learning models perform better than traditional econometric model such as autoregressive integrated moving average and improved machine learning model SVR. Besides, our proposed model has the minimum forecasting error in stock index prediction.

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