2024
DOI: 10.29220/csam.2024.31.1.105
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Forecasting realized volatility using data normalization and recurrent neural network

Yoonjoo Lee,
Dong Wan Shin,
Ji Eun Choi

Abstract: We propose recurrent neural network (RNN) methods for forecasting realized volatility (RV). The data are RVs of ten major stock price indices, four from the US, and six from the EU. Forecasts are made for relative ratio of adjacent RVs instead of the RV itself in order to avoid the out-of-scale issue. Forecasts of RV ratios distribution are first constructed from which those of RVs are computed which are shown to be better than forecasts constructed directly from RV. The apparent asymmetry of RV ratio is addre… Show more

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