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引用次数: 0
摘要
利用高频数据预测波动率在风险管理、期权定价和投资组合管理等许多金融领域发挥着至关重要的作用。现有的许多统计模型可以较好地描述和预测波动率的特征,但它们在建模阶段没有同时考虑波动率的长期记忆、高频数据的非线性特征和技术指标信息。本文旨在利用深度学习长短期记忆(LSTM)模型的预测优势,融合三类信息,即高频已实现波动率(H)、技术指标(I)以及广义自回归条件异方差(GARCH)、异质自回归(HAR)和 c 的参数来预测波动率,从而建立一个新的 LSTM-HIT 模型来预测已实现波动率。我们采用半参数方法的极值理论(EVT)来估计标准化收益率的量化值,并构建 LSTM-HIT-EVT 模型来预测风险值(VaR)。实证结果表明,在所考虑的各种模型中,LSTM-HIT 模型能提供最准确的波动率预测,而且 LSTM-HIT-EVT 模型比其他 VaR 模型得出的预测更准确。
Forecasting the high-frequency volatility based on the LSTM-HIT model
Volatility forecasting from high-frequency data plays a crucial role in many financial fields, such as risk management, option pricing, and portfolio management. Many existing statistical models could better describe and forecast the characteristics of volatility, whereas they do not simultaneously account for the long-term memory of volatility, the nonlinear characteristics of high-frequency data, and technical index information during the modeling phase. The purpose of this paper is to use the prediction advantage of deep learning long short-term memory (LSTM) model to predict the volatility fusing three classes of information, that is, high frequency realized volatility (H), technical indicators (I), and the parameters of generalized autoregression conditional heteroskedasticity(GARCH), heterogeneous autoregressive (HAR), and c, resulting in a novel LSTM-HIT model to forecast realized volatility. We employ the extreme value theory (EVT) of a semiparametric method to estimate the quantile of standardized return and construct the LSTM-HIT-EVT model to forecast the value at risk (VaR). Empirical results show that the LSTM-HIT model provides the most accurate volatility forecast among the various considered models and that the LSTM-HIT-EVT model yields forecasts more accurate than other VaR models.
期刊介绍:
The Journal of Forecasting is an international journal that publishes refereed papers on forecasting. It is multidisciplinary, welcoming papers dealing with any aspect of forecasting: theoretical, practical, computational and methodological. A broad interpretation of the topic is taken with approaches from various subject areas, such as statistics, economics, psychology, systems engineering and social sciences, all encouraged. Furthermore, the Journal welcomes a wide diversity of applications in such fields as business, government, technology and the environment. Of particular interest are papers dealing with modelling issues and the relationship of forecasting systems to decision-making processes.