Forecasting the high-frequency volatility based on the LSTM-HIT model

被引:0
作者
Liu, Guangying [1 ]
Zhuang, Ziyan [1 ]
Wang, Min [2 ]
机构
[1] Nanjing Audit Univ, Sch Stat & Data Sci, Nanjing, Peoples R China
[2] Univ Texas San Antonio, Dept Management Sci & Stat, San Antonio, TX 78284 USA
基金
中国国家自然科学基金;
关键词
deep learning; high-frequency data; long short-term memory; realized volatility; value at risk; VALUE-AT-RISK; REALIZED VOLATILITY; PREDICTION;
D O I
10.1002/for.3078
中图分类号
F [经济];
学科分类号
02 ;
摘要
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.
引用
收藏
页码:1356 / 1373
页数:18
相关论文
共 43 条
[1]   Answering the skeptics: Yes, standard volatility models do provide accurate forecasts [J].
Andersen, TG ;
Bollerslev, T .
INTERNATIONAL ECONOMIC REVIEW, 1998, 39 (04) :885-905
[2]   Modeling and forecasting realized volatility [J].
Andersen, TG ;
Bollerslev, T ;
Diebold, FX ;
Labys, P .
ECONOMETRICA, 2003, 71 (02) :579-625
[3]   Roughing it up: Including jump components in the measurement, modeling, and forecasting of return volatility [J].
Andersen, Torben G. ;
Bollerslev, Tim ;
Diebold, Francis X. .
REVIEW OF ECONOMICS AND STATISTICS, 2007, 89 (04) :701-720
[4]   Econometric analysis of realized volatility and its use in estimating stochastic volatility models [J].
Barndorff-Nielsen, OE ;
Shephard, N .
JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-STATISTICAL METHODOLOGY, 2002, 64 :253-280
[5]   Combining high frequency data with non-linear models for forecasting energy market volatility [J].
Barunik, Jozef ;
Krehlik, Tomas .
EXPERT SYSTEMS WITH APPLICATIONS, 2016, 55 :222-242
[6]   Exploiting the errors: A simple approach for improved volatility forecasting [J].
Bollerslev, Tim ;
Patton, Andrew J. ;
Quaedvlieg, Rogier .
JOURNAL OF ECONOMETRICS, 2016, 192 (01) :1-18
[7]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[8]  
Breiman L., 2017, Classification and regression trees
[9]   Combining dimensionality reduction methods with neural networks for realized volatility forecasting [J].
Bucci, Andrea ;
He, Lidan ;
Liu, Zhi .
ANNALS OF OPERATIONS RESEARCH, 2023,
[10]   Realized Volatility Forecasting with Neural Networks [J].
Bucci, Andrea .
JOURNAL OF FINANCIAL ECONOMETRICS, 2020, 18 (03) :502-531