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High frequency volatility forecasting: A new approach using a hybrid ANN‐MC‐GARCH model

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  • Aneessa Firdaus Jumoorty
  • Ruben Thoplan
  • Jason Narsoo

Abstract

Risk permeates more and more financial markets around the world. It is an essential element that all financial market actors attempt to model and manage. This paper proposes a novel model that improves the predictive accuracy of high frequency volatility forecasts. The ANN‐MC‐GARCH model is therefore developed in this research. The hybrid model enhances the MC‐GARCH conditional variance model by including endogenous market variables in a feed forward network which models volatility in terms of past disturbances and variances. The forecasting accuracy of the novel ANN‐MC‐GARCH is evaluated against the classical MC‐GARCH model. The empirical investigation employs the 1‐min high frequency observations of four exchange rates (USD/EUR, USD/GBP, USD/JPY & AUD/JPY), three market indices (France 40, UK 100 & USA 500) and two metal commodity indices (Spot Gold & Spot Silver). The backtesting method employs the RMSE and MAE performance metrics, the out‐of‐sample R2, the Diebold‐Mariano test and the Model Confidence Set (MCS) procedure. The empirical findings show that the hybrid model is superior to the MC‐GARCH model for the nine datasets.

Suggested Citation

  • Aneessa Firdaus Jumoorty & Ruben Thoplan & Jason Narsoo, 2023. "High frequency volatility forecasting: A new approach using a hybrid ANN‐MC‐GARCH model," International Journal of Finance & Economics, John Wiley & Sons, Ltd., vol. 28(4), pages 4156-4175, October.
  • Handle: RePEc:wly:ijfiec:v:28:y:2023:i:4:p:4156-4175
    DOI: 10.1002/ijfe.2640
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    References listed on IDEAS

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