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Ascertaining price formation in cryptocurrency markets with machine learning

Author

Listed:
  • Fan Fang
  • Waichung Chung
  • Carmine Ventre
  • Michail Basios
  • Leslie Kanthan
  • Lingbo Li
  • Fan Wu

Abstract

The cryptocurrency market is amongst the fastest-growing of all the financial markets in the world. Unlike traditional markets, such as equities, foreign exchange and commodities, cryptocurrency market is considered to have larger volatility and illiquidity. This paper is inspired by the recent success of using machine learning for stock market prediction. In this work, we analyze and present the characteristics of the cryptocurrency market in a high-frequency setting. In particular, we applied a machine learning approach to predict the direction of the mid-price changes on the upcoming tick. We show that there are universal features amongst cryptocurrencies which lead to models outperforming asset-specific ones. We also show that there is little point in feeding machine learning models with long sequences of data points; predictions do not improve. Furthermore, we solve the technical challenge to design a lean predictor, which performs well on live data downloaded from crypto exchanges. A novel retraining method is defined and adopted towards this end. Finally, the trade-off between model accuracy and frequency of training is analyzed in the context of multi-label prediction. Overall, we demonstrate that promising results are possible for cryptocurrencies on live data, by achieving a consistent $ 78\% $ 78% accuracy on the prediction of the mid-price movement on live exchange rate of Bitcoins vs. US dollars.

Suggested Citation

  • Fan Fang & Waichung Chung & Carmine Ventre & Michail Basios & Leslie Kanthan & Lingbo Li & Fan Wu, 2024. "Ascertaining price formation in cryptocurrency markets with machine learning," The European Journal of Finance, Taylor & Francis Journals, vol. 30(1), pages 78-100, January.
  • Handle: RePEc:taf:eurjfi:v:30:y:2024:i:1:p:78-100
    DOI: 10.1080/1351847X.2021.1908390
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    Cited by:

    1. Yi Tang & Xiaoning Wang & Wenyan Wang, 2024. "Securities Quantitative Trading Strategy Based on Deep Learning of Industrial Internet of Things," International Journal of Information Technology and Web Engineering (IJITWE), IGI Global, vol. 19(1), pages 1-16, January.

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