Forecasting realized volatility through financial turbulence and neural networks

Authors

  • Hugo Gobato Souto International School of Business at HAN University of Applied Sciences, Arnhem, the Netherlands
  • Amir Moradi International School of Business at HAN University of Applied Sciences, Arnhem, the Netherlands https://orcid.org/0000-0003-1169-7192

DOI:

https://doi.org/10.18559/ebr.2023.2.737

Keywords:

neural networks, LSTM neural networks, realized volatility prediction, financial turbulence

Abstract

This paper introduces and examines a novel realized volatility forecasting model that makes use of Long Short-Term Memory (LSTM) neural networks and the risk metric Financial Turbulence (FT). The proposed model is compared to five alternative models, of which two incorporate LSTM neural networks and the remaining three include GARCH(1,1), EGARCH(1,1), and HAR models. The results of this paper demonstrate that the proposed model yields statistically significantly more accurate and robust forecasts than all other studied models when applied to stocks with middle-to-high volatility. Yet, considering low-volatility stocks, it can only be confidently affirmed that the proposed model yields statistically significantly more robust forecasts relative to all other models considered.

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2023-07-20 — Updated on 2024-06-04

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Souto, H. G., & Moradi, A. (2024). Forecasting realized volatility through financial turbulence and neural networks . Economics and Business Review, 9(2). https://doi.org/10.18559/ebr.2023.2.737 (Original work published 2023)

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