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Forecasting volatility with a stacked model based on a hybridized Artificial Neural Network

机译:基于混合人工神经网络的堆叠模型预测波动率

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An appropriate calibration and forecasting of volatility and market risk are some of the main challenges faced by companies that have to manage the uncertainty inherent to their investments or funding operations such as banks, pension funds or insurance companies. This has become even more evident after the 2007-2008 Financial Crisis, when the forecasting models assessing the market risk and volatility failed. Since then, a significant number of theoretical developments and methodologies have appeared to improve the accuracy of the volatility forecasts and market risk assessments. Following this line of thinking, this paper introduces a model based on using a set of Machine Learning techniques, such as Gradient Descent Boosting, Random Forest, Support Vector Machine and Artificial Neural Network, where those algorithms are stacked to predict S&P500 volatility. The results suggest that our construction outperforms other habitual models on the ability to forecast the level of volatility, leading to a more accurate assessment of the market risk. (C) 2019 Elsevier Ltd. All rights reserved.
机译:对波动性和市场风险进行适当的校准和预测是必须应对其投资或融资业务固有不确定性的公司(如银行,养老基金或保险公司)面临的一些主要挑战。在2007年至2008年的金融危机之后,这种情况变得更加明显,当时评估市场风险和波动性的预测模型失败了。自那时以来,出现了许多理论发展和方法,以提高波动率预测和市场风险评估的准确性。遵循这种思路,本文介绍了一个基于一组使用机器学习技术的模型,例如梯度下降提升,随机森林,支持向量机和人工神经网络,这些算法被堆叠以预测S&P500的波动性。结果表明,在预测波动率水平的能力方面,我们的结构优于其他惯常模型,从而可以更准确地评估市场风险。 (C)2019 Elsevier Ltd.保留所有权利。

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