We present a model for active trading based on reinforcement machine learning and apply this to five major cryptocurrencies in circulation. In relation to a buy-and-hold approach, we demonstrate how this model yields enhanced risk-adjusted returns and serves to reduce downside risk. These findings hold when accounting for actual transaction costs. We conclude that real-world portfolio management application of the model is viable, yet, performance can vary based on how it is calibrated in test samples.
CITATION STYLE
Koker, T. E., & Koutmos, D. (2020). Cryptocurrency Trading Using Machine Learning. Journal of Risk and Financial Management, 13(8). https://doi.org/10.3390/jrfm13080178
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