Abstract
This paper studies the forecasting ability of cryptocurrency time series. This study is about the four most capitalised cryptocurrencies: Bitcoin, Ethereum, Litecoin and Ripple. Different Bayesian models are compared, including models with constant and time-varying volatility, such as stochastic volatility and GARCH. Moreover, some cryptopredictors are included in the analysis, such as S&P 500 and Nikkei 225. In this paper, the results show that stochastic volatility is significantly outperforming the benchmark of VAR in both point and density forecasting. Using a different type of distribution, for the errors of the stochastic volatility, the student-t distribution is shown to outperform the standard normal approach.
Reference39 articles.
1. Evaluating Forecasting Methods;Armstrong,2001
2. Portfolio optimisation under flexible dynamic dependence modelling
3. Cryptocurrencies as an Asset Class? An Empirical Assessment;Bianchi,2018
4. Japan’s BITpoint to Add Bitcoin Payments to Retail Outletshttps://www.bloomberg.com/news/articles/2017-05-29/japans-bitpoint-to-add-bitcoin-payments-to-100-000s-of-outlets
5. Some Central Banks Are Exploring the Use of Cryptocurrencieshttps://www.bloomberg.com/news/articles/201706-28/rise-of-digital-coins-has-central-banks-considering-eversions
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