Seasonality in the cross-section of cryptocurrency returns
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Date
Authors
Long, Huaigang
Zaremba, Adam
Demir, Ender
Szczygielski, Jan Jakub
Vasenin, Mikhail
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
This study presents the first attempt to examine the cross-sectional seasonality anomaly in
cryptocurrency markets. To this end, we apply sorts and cross-sectional regressions to investigate
daily returns on 151 cryptocurrencies for the years 2016 to 2019. We find a significant seasonal
pattern: average past same-weekday returns positively predict future performance in the crosssection.
Cryptocurrencies with high same-day returns in the past outperform cryptocurrencies
with a low same-day return. This effect is not subsumed by other established return predictors
such as momentum, size, beta, idiosyncratic risk, or liquidity.
Description
Keywords
Cryptocurrencies, Cross-sectional seasonality, Cross-section of returns, Return predictability, Asset pricing
Sustainable Development Goals
Citation
Long, H.G., Zaremba, A., Demir, E. et al. 2020, 'Seasonality in the cross-section of cryptocurrency returns', Finance Research Letters, vol. 35, art. 101566, pp. 1-8.