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A Gated Recurrent Unit Approach to Bitcoin Price Prediction

机译:比特币价格预测的门控经常性单元方法

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In today’s era of big data, deep learning and artificial intelligence have formed the backbone for cryptocurrency portfolio optimization. Researchers have investigated various state of the art machine learning models to predict Bitcoin price and volatility. Machine learning models like recurrent neural network (RNN) and long short-term memory (LSTM) have been shown to perform better than traditional time series models in cryptocurrency price prediction. However, very few studies have applied sequence models with robust feature engineering to predict future pricing. In this study, we investigate a framework with a set of advanced machine learning forecasting methods with a fixed set of exogenous and endogenous factors to predict daily Bitcoin prices. We study and compare different approaches using the root mean squared error (RMSE). Experimental results show that the gated recurring unit (GRU) model with recurrent dropout performs better than popular existing models. We also show that simple trading strategies, when implemented with our proposed GRU model and with proper learning, can lead to financial gain.
机译:在今天的大数据的时代,深度学习和人工智能已经形成了加密货币产品组合优化的骨干。研究人员研究了各种最先进的机器学习模型,以预测比特币价格和波动性。机器学习模型如经常性神经网络(RNN)和长短短期记忆(LSTM)比加密货价预测中的传统时间序列模型更好。然而,很少有研究已经应用了具有强大特征工程的序列模型,以预测未来的定价。在这项研究中,我们调查了一套高级机器学习预测方法的框架,具有固定的外源性和内源性因素,以预测日常比特币价格。我们使用根均方误差(RMSE)来研究和比较不同的方法。实验结果表明,具有复发辍学的门控复发单元(GRU)模型比流行的现有型号更好地表现出。我们还表明,随着我们提出的GRU模型和正确的学习实施,较简单的交易策略,可以导致财务收益。

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