Forecasting and trading Bitcoin with machine learning techniques and a hybrid volatility/sentiment leverage
【Author】 Wei, Mingzhe; Sermpinis, Georgios; Stasinakis, Charalampos
【Source】JOURNAL OF FORECASTING
【影响因子】2.627
【Abstract】This paper explores the use of machine learning algorithms and narrative sentiments when applied to the task of forecasting and trading Bitcoin. The forecasting framework starts from the selection among 295 individual prediction models. Three machine learning approaches, namely, neural networks, support vector machines, and gradient boosting approach, are used to further improve the forecasting performance of individual models. By taking data-snooping bias into account, three different metrics are applied to examine the forecasting ability of each model. Our results suggest that the machine learning techniques always outperform the best individual model whereas the gradient boosting framework has the best performance among all the models. Finally, a time-varying leverage trading strategy combined with narrative sentiments and volatility is proposed to enhance trading performance. This suggests that the hybrid leverage strategy provides the highest Bitcoin profits consistently among all trading exercises.
【Keywords】cryptocurrencies; forecast combinations; narratives; trading strategies
【发表时间】
【收录时间】2022-11-25
【文献类型】理论模型
【主题类别】
区块链治理-市场治理-价格预测
【DOI】 10.1002/for.2922
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