Machine learning for cryptocurrency market prediction and trading

IF 3.9 Q1 Mathematics
Patrick Jaquart, Sven Köpke, Christof Weinhardt
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引用次数: 4

Abstract

We employ and analyze various machine learning models for daily cryptocurrency market prediction and trading. We train the models to predict binary relative daily market movements of the 100 largest cryptocurrencies. Our results show that all employed models make statistically viable predictions, whereby the average accuracy values calculated on all cryptocurrencies range from 52.9% to 54.1%. These accuracy values increase to a range from 57.5% to 59.5% when calculated on the subset of predictions with the 10% highest model confidences per class and day. We find that a long-short portfolio strategy based on the predictions of the employed LSTM and GRU ensemble models yields an annualized out-of-sample Sharpe ratio after transaction costs of 3.23 and 3.12, respectively. In comparison, the buy-and-hold benchmark market portfolio strategy only yields a Sharpe ratio of 1.33. These results indicate a challenge to weak form cryptocurrency market efficiency, albeit the influence of certain limits to arbitrage cannot be entirely ruled out.

加密货币市场预测和交易的机器学习
我们使用和分析各种机器学习模型进行日常加密货币市场预测和交易。我们训练模型来预测100种最大加密货币的二进制相对每日市场走势。我们的研究结果表明,所有使用的模型都可以进行统计上可行的预测,其中所有加密货币计算的平均准确率值在52.9%到54.1%之间。当以每类和每天10%的最高模型置信度计算预测子集时,这些精度值增加到57.5%到59.5%的范围。我们发现,基于LSTM和GRU集成模型预测的多空投资组合策略在交易成本后的年化样本外夏普比率分别为3.23和3.12。相比之下,买入并持有基准市场投资组合策略的夏普比率仅为1.33。这些结果表明,弱形式加密货币市场效率面临挑战,尽管不能完全排除某些限制对套利的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Finance and Data Science
Journal of Finance and Data Science Mathematics-Statistics and Probability
CiteScore
3.90
自引率
0.00%
发文量
15
审稿时长
30 days
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