Forecasting returns of major cryptocurrencies : evidence from regime-switching factor models
Loading...
Date
Authors
Bouri, Elie
Christou, Christina
Gupta, Rangan
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
The returns of cryptocurrencies tend to co-move, with their degree of co-movement being contingent on the (bullish- or bearish-) states. Given this, we use standard factor models and regime-switching factor loadings to forecast the returns of a specific cryptocurrency based on its lagged information and informational contents of 14 other cryptocurrencies, with these 15 together constituting 65% of the market capitalization. Considering top five cryptocurrencies namely, Bitcoin, Ethereum, Ripple, Dogecoin, and Litecoin, we find significant forecastability and evidence that factor models, in general, outperform the benchmark random-walk model, with the regime-switching versions standing out in the majority of the cases.
Description
DATA AVAILABILITY : Data are available from : https://coinmarketcap.com. The link is mentioned in the manuscript.
Keywords
Cryptocurrencies, Factor models, Markov-switching model, Forecasting, SDG-08: Decent work and economic growth
Sustainable Development Goals
Citation
Bouri E,., Christou, C. & Gupta, R. 2022, 'Forecasting returns of major cryptocurrencies: Evidence from regime-switching factor models', Finance Research Letters, vol. 49, art. 103193, pp. 1-7, doi : 10.1016/j.frl.2022.103193.