结合深度学习和GARCH模型的金融波动和风险预测

Jakub Michańków, Łukasz Kwiatkowski, Janusz Morajda
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引用次数: 0

摘要

在本文中,我们通过将常见的计量GARCH时间序列模型与深度学习神经网络相结合,开发了一种混合方法来预测金融工具的波动性和风险。对于后者,我们采用栅极循环单元(GRU)网络,而GARCH组件使用四种不同的规范:标准GARCH, EGARCH, GJR-GARCH和parch。我们使用标准普尔500指数(S&P 500 index)的日对数回报以及黄金价格和比特币价格对模型进行了测试,这三种资产代表了相当不同的波动性动态。作为主要的波动估计量,也是我们混合模型的目标函数的基础,我们使用基于价格范围的Garman-Klassestimator,修改为包含开盘价和收盘价。由混合模型得出的波动率预测采用风险价值(VaR)和预期缺口(ES)在5%和1%两种不同的容差水平下评估资产风险。在波动性和风险预测的背景下,讨论了GARCH和gru方法结合的收益。总的来说,可以得出结论,混合解决方案产生更准确的点波动率预测,尽管它不一定转化为更好的VaR和ES预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Deep Learning and GARCH Models for Financial Volatility and Risk Forecasting
In this paper, we develop a hybrid approach to forecasting the volatility and risk of financial instruments by combining common econometric GARCH time series models with deep learning neural networks. For the latter, we employ Gated Recurrent Unit (GRU) networks, whereas four different specifications are used as the GARCH component: standard GARCH, EGARCH, GJR-GARCH and APARCH. Models are tested using daily logarithmic returns on the S&P 500 index as well as gold price Bitcoin prices, with the three assets representing quite distinct volatility dynamics. As the main volatility estimator, also underlying the target function of our hybrid models, we use the price-range-based Garman-Klass estimator, modified to incorporate the opening and closing prices. Volatility forecasts resulting from the hybrid models are employed to evaluate the assets' risk using the Value-at-Risk (VaR) and Expected Shortfall (ES) at two different tolerance levels of 5% and 1%. Gains from combining the GARCH and GRU approaches are discussed in the contexts of both the volatility and risk forecasts. In general, it can be concluded that the hybrid solutions produce more accurate point volatility forecasts, although it does not necessarily translate into superior VaR and ES forecasts.
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