Predicting Price Direction of Cryptocurrency Using Artificial Neural Networks

Wenbo Ye
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引用次数: 1

Abstract

The machine learning method has been used in stock price prediction for a long time, and the price of cryptocurrencies such as bitcoin has attracted more and more attention in recent years. This paper aims to improve the method applicable to the stock market and try to use it in cryptocurrency price prediction. A simple three-layered feedforward artificial neural networks (ANN) model was applied in this paper to predict the daily directions of cryptocurrency prices. The historical trading data of Bitcoin, Ethereum, and Cardano were used in the experiments. Nine selected technical indicators were preprocessed into discrete trend data, and they were input into the model together with three additional indicators for training. This study has preliminarily obtained an effective result with price prediction accuracy of the three cryptocurrencies between 61% and 65%.
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利用人工神经网络预测加密货币价格走势
机器学习方法在股票价格预测中应用已经很长时间了,而比特币等加密货币的价格近年来也越来越受到关注。本文旨在改进适用于股票市场的方法,并尝试将其用于加密货币的价格预测。本文采用简单的三层前馈人工神经网络(ANN)模型来预测加密货币价格的每日走势。实验中使用了比特币、以太坊和卡尔达诺的历史交易数据。将选定的9个技术指标预处理成离散趋势数据,与另外3个指标一起输入模型进行训练。本研究初步获得了有效的结果,三种加密货币的价格预测准确率在61% ~ 65%之间。
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