Quantitative Finance and Economics (Jun 2022)

Fourier transform based LSTM stock prediction model under oil shocks

  • Xiaohang Ren ,
  • Weixi Xu,
  • Kun Duan

DOI
https://doi.org/10.3934/QFE.2022015
Journal volume & issue
Vol. 6, no. 2
pp. 342 – 358

Abstract

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This paper analyses the impact of various oil shocks on the stock volatility prediction by using a Fourier transform-based Long Short-Term Memory (LSTM) model. Oil shocks are decomposed into five components following individual oil price change indicators. By employing a daily dataset involving S & P 500 stock index and WTI oil futures contract, our results show that different oil shocks exert varied impacts on the dynamics of stock price volatility by using gradient descent. Having exploited the role of oil shocks, we further find that the Fourier transform-based LSTM technique improves forecasting accuracy of the stock volatility dynamics from both statistical and economic perspectives. Additional analyses reassure the robustness of our findings. Clear comprehension of the future stock market dynamics possesses important implications for sensible financial risk management.

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