LSTM-GARCH Hybrid Model for the Prediction of Volatility in Cryptocurrency Portfolios

被引:17
|
作者
Garcia-Medina, Andres [1 ,2 ]
Aguayo-Moreno, Ester [1 ]
机构
[1] Ctr Invest Matemat, Unidad Monterrey, Alianza Ctr 502, Apodaca 66628, Nuevo Leon, Mexico
[2] Consejo Nacl Ciencia & Technol, Insurgentes Sur 1582, Mexico City 03940, Mexico
关键词
Cryptocurrencies; GARCH-LSTM models; Volatility; CONDITIONAL HETEROSKEDASTICITY; ASSET RETURNS; VOLUME; BITCOIN; DOLLAR; GOLD;
D O I
10.1007/s10614-023-10373-8
中图分类号
F [经济];
学科分类号
02 ;
摘要
In the present work, the volatility of the leading cryptocurrencies is predicted through generalised autoregressive conditional heteroskedasticity (GARCH) models, multilayer perceptron (MLP), long short-term memory (LSTM), and hybrid models of the type LSTM and GARCH, where parameters of the GARCH family are included as features of LSTM models. The study period covered the scenario of the World Health Organization pandemic declaration around March 2020 at hourly frequency. We have found that the different variants of deep neural network models outperform those of the GARCH family in the sense of the hetorerocedastic error, and absolute and squared error (HSE). Under the sharpe ratio, the volatility forecasting of a uniform portfolio at long horizons systematically outperforms the stablecoin Tether, which is considered here as the risk-free asset. Also, including transaction volume helps reduce the value at risk or loss probability for the uniform portfolio. Moreover, in a minimum variance portfolio, it is observed that before the pandemic declaration, a large proportion of the capital was allocated to bitcoin (BTC). In contrast, after March 2020, the portfolio is more diversified with short positions for BTC. Moreover, the MLP models give the best predictive results, although not statistically different in accuracy compared to the LSTM and LSTM-GARCH versions under the Diebold-Mariano test. In sum, MLP models outperform most stylised financial models and are less computationally expensive than more complex neural networks. Therefore, simple learning models are suggested in highly non-linear time series volatility forecasts as it is the cryptocurrency market.
引用
收藏
页码:1511 / 1542
页数:32
相关论文
共 50 条
  • [21] LSTM Based Sentiment Analysis for Cryptocurrency Prediction
    Huang, Xin
    Zhang, Wenbin
    Tang, Xuejiao
    Zhang, Mingli
    Surbiryala, Jayachander
    Iosifidis, Vasileios
    Liu, Zhen
    Zhang, Ji
    DATABASE SYSTEMS FOR ADVANCED APPLICATIONS (DASFAA 2021), PT III, 2021, 12683 : 617 - 621
  • [22] Forecasting Commodity Market Returns Volatility: A Hybrid Ensemble Learning GARCH-LSTM based Approach
    Kakade, Kshitij
    Mishra, Aswini Kumar
    Ghate, Kshitish
    Gupta, Shivang
    INTELLIGENT SYSTEMS IN ACCOUNTING FINANCE & MANAGEMENT, 2022, 29 (02) : 103 - 117
  • [23] REIT volatility prediction for skew-GED distribution of the GARCH model
    Lee, Yen-Hsien
    Pai, Tung-Yueh
    EXPERT SYSTEMS WITH APPLICATIONS, 2010, 37 (07) : 4737 - 4741
  • [24] PREDICTION OF CRYPTOCURRENCY PRICES WITH LSTM AND GRU MODELS
    Demirci, Esranur
    Karaatli, Meltem
    JOURNAL OF MEHMET AKIF ERSOY UNIVERSITY ECONOMICS AND ADMINISTRATIVE SCIENCES FACULTY, 2023, 10 (01): : 134 - 157
  • [25] Beyond GARCH in cryptocurrency volatility modelling: superiority of range-based estimators
    Sun, Weizhu
    Kristoufek, Ladislav
    APPLIED ECONOMICS LETTERS, 2024,
  • [26] Can climate risks affect cryptocurrency volatility? Fresh evidence from a GARCH-MIDAS-X model
    Xia, Yufei
    Fu, Yating
    Zong, Ziyi
    Zheng, Qiong
    APPLIED ECONOMICS LETTERS, 2025, 32 (06) : 803 - 807
  • [27] Volatility Forecasting using a Hybrid GJR-GARCH Neural Network Model
    Monfared, Soheil Almasi
    Enke, David
    COMPLEX ADAPTIVE SYSTEMS, 2014, 36 : 246 - 253
  • [28] A Novel Cryptocurrency Price Prediction Model Using GRU, LSTM and bi-LSTM Machine Learning Algorithms
    Hamayel, Mohammad J. J.
    Owda, Amani Yousef
    AI, 2021, 2 (04) : 477 - 496
  • [29] Volatility of main metals forecasted by a hybrid ANN-GARCH model with regressors
    Werner Kristjanpoller, R.
    Esteban Hernandez, P.
    EXPERT SYSTEMS WITH APPLICATIONS, 2017, 84 : 290 - 300
  • [30] A combined framework to explore cryptocurrency volatility and dependence using multivariate GARCH and Copula modeling
    Queiroz, R. G. S.
    Kristoufek, L.
    David, S. A.
    PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2024, 652