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Modelling volatility of cryptocurrencies using Markov-Switching GARCH models
Authors
GM Caporale
T Zekokh
Publication date
21 December 2018
Publisher
'Elsevier BV'
Doi
Abstract
© 2018 The Authors. This paper aims to select the best model or set of models for modelling volatility of the four most popular cryptocurrencies, i.e. Bitcoin, Ethereum, Ripple and Litecoin. More than 1000 GARCH models are fitted to the log returns of the exchange rates of each of these cryptocurrencies to estimate a one-step ahead prediction of Value-at-Risk (VaR) and Expected Shortfall (ES) on a rolling window basis. The best model or superior set of models is then chosen by backtesting VaR and ES as well as using a Model Confidence Set (MCS) procedure for their loss functions. The results imply that using standard GARCH models may yield incorrect VaR and ES predictions, and hence result in ineffective risk-management, portfolio optimisation, pricing of derivative securities etc. These could be improved by using instead the model specifications allowing for asymmetries and regime switching suggested by our analysis, from which both investors and regulators can benefit. Graphical abstract Prices were transformed into log returns by taking first differences of their logarithm. They are negatively skewed in the case of Bitcoin and positively skewed in all other cases. [see PDF for image
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Last time updated on 18/12/2020