Forecasting volatility under fractality, regime-switching, long memory and student-t innovations

被引:37
|
作者
Lux, Thomas
Morales-Arias, Leonardo [1 ]
机构
[1] Univ Kiel, Dept Econ, D-24118 Kiel, Germany
关键词
Multiplicative volatility models; Long memory; Student-t innovations; International volatility forecasting; MULTIFRACTAL MODEL; STOCK-MARKET;
D O I
10.1016/j.csda.2010.03.005
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
The Markov-switching Multifractal model of asset returns with Student-t innovations (MSM-t henceforth) is introduced as an extension to the Markov-switching Multifractal model of asset returns (MSM). The MSM-t can be estimated via Maximum Likelihood (ML) and Generalized Method of Moments (GMM) and volatility forecasting can be performed via Bayesian updating (ML) or best linear forecasts (GMM). Monte Carlo simulations show that using GMM plus linear forecasts leads to minor losses in efficiency compared to optimal Bayesian forecasts based on ML estimates. The forecasting capability of the MSM-t model is evaluated empirically in a comprehensive panel forecasting analysis with three different cross-sections of assets at the country level (all-share equity indices, bond indices and real estate security indices). Empirical forecasts of the MSM-t model are compared to those obtained from its Gaussian counterparts and other volatility models of the Generalized Autoregressive Conditional Heteroskedasticity (GARCH) family. In terms of mean absolute errors (mean squared errors), the MSM-t (Gaussian MSM) dominates all other models at most forecasting horizons for the various asset classes considered. Furthermore, forecast combinations obtained from the MSM and (Fractionally Integrated) GARCH models provide an improvement upon forecasts from single models. (C) 2010 Elsevier B.V. All rights reserved.
引用
收藏
页码:2676 / 2692
页数:17
相关论文
共 47 条
  • [1] Forecasting volatility and volume in the Tokyo Stock Market: Long memory, fractality and regime switching
    Lux, Thomas
    Kaizoji, Taisei
    [J]. JOURNAL OF ECONOMIC DYNAMICS & CONTROL, 2007, 31 (06): : 1808 - 1843
  • [2] Volatility forecasting: long memory, regime switching and heteroscedasticity
    Ma, Feng
    Lu, Xinjie
    Yang, Ke
    Zhang, Yaojie
    [J]. APPLIED ECONOMICS, 2019, 51 (38) : 4151 - 4163
  • [3] Forecasting realized range volatility: a regime-switching approach
    Ma, Feng
    Liu, Li
    Liu, Zhichao
    Wei, Yu
    [J]. APPLIED ECONOMICS LETTERS, 2015, 22 (17) : 1361 - 1365
  • [4] Cryptocurrency volatility forecasting: A Markov regime-switching MIDAS approach
    Ma, Feng
    Liang, Chao
    Ma, Yuanhui
    Wahab, M. I. M.
    [J]. JOURNAL OF FORECASTING, 2020, 39 (08) : 1277 - 1290
  • [5] Forecasting stock market volatility with regime-switching GARCH models
    Marcucci, J
    [J]. STUDIES IN NONLINEAR DYNAMICS AND ECONOMETRICS, 2005, 9 (04):
  • [6] Forecasting hedge fund volatility: a Markov regime-switching approach
    Blazsek, Szabolcs
    Downarowicz, Anna
    [J]. EUROPEAN JOURNAL OF FINANCE, 2013, 19 (04): : 243 - 275
  • [7] Detection of volatility regime-switching for crude oil price modeling and forecasting
    Liu, Yue
    Sun, Huaping
    Zhang, Jijian
    Taghizadeh-Hesary, Farhad
    [J]. RESOURCES POLICY, 2020, 69
  • [8] Asset Liquidation Under Drift Uncertainty and Regime-Switching Volatility
    Vaicenavicius, Juozas
    [J]. APPLIED MATHEMATICS AND OPTIMIZATION, 2020, 81 (03): : 757 - 784
  • [9] Asset Liquidation Under Drift Uncertainty and Regime-Switching Volatility
    Juozas Vaicenavicius
    [J]. Applied Mathematics & Optimization, 2020, 81 : 757 - 784
  • [10] On generalized bivariate student-t Gegenbauer long memory stochastic volatility models with leverage: Bayesian forecasting of cryptocurrencies with a focus on Bitcoin
    Phillip, Andrew
    Chan, Jennifer
    Peiris, Shelton
    [J]. ECONOMETRICS AND STATISTICS, 2020, 16 : 69 - 90