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Forecasting of Realised Volatility with the Random Forests Algorithm

机译:用随机森林算法预测已实现的波动率

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The paper addresses the forecasting of realised volatility for financial time series using the heterogeneous autoregressive model (HAR) and machine learning techniques. We consider an extended version of the existing HAR model with included purified implied volatility. For this extended model, we apply the random forests algorithm for the forecasting of the direction and the magnitude of the realised volatility. In experiments with historical high frequency data, we demonstrate improvements of forecast accuracy for the proposed model.
机译:本文使用异构自回归模型(HAR)和机器学习技术来预测金融时间序列的已实现波动率。我们考虑了现有HAR模型的扩展版本,其中包括纯净隐含波动率。对于此扩展模型,我们将随机森林算法用于预测已实现波动的方向和幅度。在具有历史高频数据的实验中,我们证明了所提出模型的预测准确性的提高。

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