量化加密货币交易:探索机器学习技术的使用

Giuseppe Attanasio, Luca Cagliero, P. Garza, Elena Baralis
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引用次数: 8

摘要

机器学习技术已经在量化交易系统的研究和开发中得到了应用。这些系统通常利用经过历史数据训练的监督模型,以便在金融市场上自动生成买入/卖出信号。尽管在这种背景下,已经对股票、外汇和期货交易市场进行了深入的探索,但将机器学习技术应用于新兴的加密货币交易市场的努力却比较有限。本文通过回溯测试模型在八年期间的表现,探索了最成熟的分类和时间序列预测模型在加密货币交易中的潜力。结果表明,由于基础金融工具的异质性和波动性,基于序列预测的预测模型优于分类技术。此外,与仅基于比特币交易的基准策略相比,同时交易多种加密货币显著提高了整体回报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantitative cryptocurrency trading: exploring the use of machine learning techniques
Machine learning techniques have found application in the study and development of quantitative trading systems. These systems usually exploit supervised models trained on historical data in order to automatically generate buy/sell signals on the financial markets. Although in this context a deep exploration of the Stock, Forex, and Future exchange markets has already been made, a more limited effort has been devoted to the application of machine learning techniques to the emerging cryptocurrency exchange market. This paper explores the potential of the most established classification and time series forecasting models in cryptocurrency trading by backtesting model performance over a eight year period. The results show that, due to the heterogeneity and volatility of the underlying financial instruments, prediction models based on series forecasting perform better than classification techniques. Furthermore, trading multiple cryptocurrencies at the same time significantly increases the overall returns compared to baseline strategies exclusively based on Bitcoin trading.
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