Predicting the Price of Bitcoin Using Machine Learning

S. McNally, Jason Roche, Simon Caton
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引用次数: 415

Abstract

The goal of this paper is to ascertain with what accuracy the direction of Bitcoin price in USD can be predicted. The price data is sourced from the Bitcoin Price Index. The task is achieved with varying degrees of success through the implementation of a Bayesian optimised recurrent neural network (RNN) and a Long Short Term Memory (LSTM) network. The LSTM achieves the highest classification accuracy of 52% and a RMSE of 8%. The popular ARIMA model for time series forecasting is implemented as a comparison to the deep learning models. As expected, the non-linear deep learning methods outperform the ARIMA forecast which performs poorly. Finally, both deep learning models are benchmarked on both a GPU and a CPU with the training time on the GPU outperforming the CPU implementation by 67.7%.
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使用机器学习预测比特币的价格
本文的目的是确定比特币以美元计价的价格方向可以预测的准确性。价格数据来源于比特币价格指数。通过贝叶斯优化循环神经网络(RNN)和长短期记忆(LSTM)网络的实现,该任务取得了不同程度的成功。LSTM的最高分类准确率为52%,RMSE为8%。常用的ARIMA时间序列预测模型与深度学习模型进行了比较。正如预期的那样,非线性深度学习方法优于表现不佳的ARIMA预测。最后,两种深度学习模型都在GPU和CPU上进行了基准测试,GPU上的训练时间比CPU实现的训练时间高出67.7%。
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