Bitcoin Price Prediction Model Development Using Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM)

Jonathan Cahyadi, Amalia Zahra
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Abstract

Cryptocurrency is a virtual currency that can be used as a financial or economic standard, foreign currency reserve, and as a means of payment in some countries. The value that goes up and down every time is not easy to predict using logic. This is a problem for investors, besides that investors lack knowledge about the direction of crypto money movement. In addition, there is no system that can predict the price of Bitcoin, so this can cause investors to take the wrong steps in transactions and can cause losses. To avoid this risk, a system is needed that can predict bitcoin prices using data mining techniques, namely forecasting, the algorithms used are CNN and LSTM. The data used is Bitcoin closing price data from January 1, 2017, to April 26, 2023. The data is divided into 80% training data and 20% testing data. The prediction results are evaluated using MAPE which gets a MAPE value of 0.037 or 3.7% in the CNN algorithm, while the LSTM algorithm gets a value of 0.065 or 6.5%. The MAPE results of the two algorithms are in the MAPE range <10%, so it can be said that the ability of the forecasting model is very good so that it can be used as a reference to determine the prediction of bitcoin prices in the next few periods.
使用卷积神经网络(CNN)和长短期记忆(LSTM)开发比特币价格预测模型
加密货币是一种虚拟货币,在一些国家可用作金融或经济标准、外汇储备以及支付手段。每次涨跌的价值都不容易用逻辑来预测。这对投资者来说是个问题,此外,投资者也缺乏对加密货币走势方向的了解。此外,没有一个系统可以预测比特币的价格,因此这可能会导致投资者采取错误的交易步骤,造成损失。为了避免这种风险,需要一个能利用数据挖掘技术(即预测技术)预测比特币价格的系统,使用的算法是 CNN 和 LSTM。使用的数据是 2017 年 1 月 1 日至 2023 年 4 月 26 日的比特币收盘价数据。数据分为 80% 的训练数据和 20% 的测试数据。预测结果使用 MAPE 进行评估,CNN 算法的 MAPE 值为 0.037 或 3.7%,而 LSTM 算法的 MAPE 值为 0.065 或 6.5%。两种算法的 MAPE 结果都在 MAPE 小于 10% 的范围内,因此可以说预测模型的能力非常好,可以作为确定未来几期比特币价格预测的参考。
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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