计算机科学
数字加密货币
夏普比率
波动性(金融)
水准点(测量)
散列函数
技术分析
人工智能
期货合约
特征选择
计量经济学
人工神经网络
机器学习
经济
金融经济学
文件夹
计算机安全
地理
大地测量学
作者
Pavan Kumar Nagula,Christos Alexakis
标识
DOI:10.1016/j.jbef.2022.100741
摘要
Several machine learning techniques and hybrid architectures for predicting bitcoin price movement have been presented in the past. Our paper proposes a hybrid model encompassing classification and regression models for predicting bitcoin prices. Our analysis found that the automated feature interactions learner (deep cross networks) error performance using a plethora of technical indicators, including crypto-specific technical indicator difficulty ribbon compression and control variables such as Metcalfe’s value of bitcoin, number of unique active addresses, bitcoin network hash rate, and S&P 500 log returns, in a hybrid architecture is better than the single-stage architecture. The hybrid model predicted a 100% directional hit rate and maintained steady volatility in returns for the out-of-sample period. Our paper concludes that in terms of risk (Sharpe ratio 1.03) and profitability (260% and 82%), the hybrid model’s bitcoin futures strategy performed better than the deep cross network regression and buy-and-hold benchmark strategies.
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