Deep Learning Predictions for Cryptocurrencies

A. Thavaneswaran, You Liang, Sulalitha Bowala, Alex Paseka, M. Ghahramani
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Abstract

Recently there has been a growing interest in applying neural network modelling from natural language processing to financial time series prediction problems in computational finance. Cryptocurrency price prediction is a challenging problem with non-stationary market price and volatility clustering. Cryp-tocurrency data tends to be non-stationary, which means that predictive information extracted using deep learning techniques on observed data can not be used with future data. Moreover, there is a very little signal in cryptocurrency data to indicate the future direction of the market. This paper proposes a sensible way to frame the prediction problem as a dynamic regression problem by defining the features in the feedforward neural networks and the target as an appropriate average of the historical data. The novelty of this paper is to use deep learning algorithms and statistical bootstrapping to obtain cryptocurrency price prediction and the corresponding prediction intervals. It is shown that neural networks are capable of modelling nonlinearity directly for nonlinear time series models. The proposed hybrid approach is evaluated using simulated and cryptocurrency data through numerical experiments. Moreover, Gaussian and boot-strap prediction intervals for the price and the volatility of the prediction errors, are also discussed in some detail.
加密货币的深度学习预测
近年来,人们对将自然语言处理中的神经网络建模应用于计算金融中的金融时间序列预测问题越来越感兴趣。加密货币价格预测是一个具有非平稳市场价格和波动性聚类的挑战性问题。加密货币数据往往是非平稳的,这意味着使用深度学习技术从观察数据中提取的预测信息不能用于未来的数据。此外,加密货币数据中几乎没有信号表明市场的未来方向。本文提出了一种合理的方法,将前馈神经网络中的特征定义为动态回归问题,并将目标定义为历史数据的适当平均值。本文的新颖之处在于使用深度学习算法和统计自举来获得加密货币的价格预测和相应的预测区间。结果表明,神经网络能够直接对非线性时间序列模型进行非线性建模。通过数值实验,使用模拟和加密数据对所提出的混合方法进行了评估。此外,本文还详细讨论了高斯区间和bootstrap区间对价格和波动率的预测误差。
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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