Volume 16, no. 4Pages 45 - 60

Forecasting Stock Return Volatility Using the Realized Garch Model and an Artificial Neural Network

Youssra Bakkali, Mhamed EL Merzguioui, Abdelhadi Akharif, Abdellah Azmani
Volatility forecasting is required for risk management, asset allocation, option pricing, and financial market trading. It can be done by using various time series forecasting techniques and Artificial Neural Networks (ANN).
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Keywords
The current research focuses on the modeling and forecasting of stock market indices using high-frequency data. A recent high-frequency volatility model is called the Realized GARCH (RGARCH) model, where the key feature is an equation that relates the realized measure to the conditional variance of returns. RGARCH then takes into account the asymmetry of effects due to shocks.
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