PREDICTING BITCOIN PRICE WITH THE LSTMA MODEL

Q2 Economics, Econometrics and Finance Journal of Asian Finance, Economics and Business Pub Date : 2023-09-01 DOI:10.17261/pressacademia.2023.1804
Osman Gazi Polat, Ayben Koy
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Abstract

Purpose- Forecasting techniques and models are extremely important for people and organizations that are in the right decision making and investment stage. Forecast accuracy enables successful decisions and allows investors to maximize their profits. The development of finance and related technologies in the world and innovative financial instruments have made it interesting for investors. The most popular of these developments is undoubtedly Bitcoin, a product of blockchain technology. The purpose of this study is to predict the future values of Bitcoin. Methodology- In this study, future predictions are made using an LSTM model based on Bitcoin's historical data and indicators of key market forecasters. In this study, 3 different data sets were created by selecting 1 indicator from 4 different indicator types. The 10 Bitcoin data coming after the last value is estimated. Findings- In this study, 3 different data sets were created by selecting an indicator from 4 different indicator groups. These datasets were first trained with the iterative neural network LSTM model and then tested with real values. At the same time, the next 10 bitcoin price values were also predicted in a 15-minute period. Error rates at the end of the model were compared with each other. The 1st dataset, with the most used indicators in the datasets, produced the lowest error rate. Conclusion- The dataset 1, which consists of the most used indicators of the datasets, gave the lowest error rate. According to this result, the rate of reaching realistic values increases as the use of indicators increases. Keywords: LSTM, bitcoin, cryptocurrency, neural network, prediction JEL Codes: C53, C45, G10
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用lstma模型预测比特币价格
目的——预测技术和模型对于处于正确决策和投资阶段的个人和组织是极其重要的。预测的准确性使决策成功,并使投资者的利润最大化。世界金融及其相关技术的发展和创新金融工具使投资者对其产生了兴趣。这些发展中最受欢迎的无疑是比特币,它是区块链技术的产物。本研究的目的是预测比特币的未来价值。方法-在本研究中,使用基于比特币历史数据和主要市场预测者指标的LSTM模型进行未来预测。在本研究中,从4种不同的指标类型中选取1个指标,形成3个不同的数据集。估计最后一个值之后的10个比特币数据。在本研究中,通过从4个不同的指标组中选择一个指标,创建了3个不同的数据集。这些数据集首先用迭代神经网络LSTM模型进行训练,然后用实值进行测试。与此同时,未来10个比特币的价格也在15分钟内被预测出来。模型结束时的错误率相互比较。第一个数据集使用了数据集中使用最多的指标,产生的错误率最低。结论-数据集1是由数据集中最常用的指标组成的,误差率最低。根据这一结果,随着指标使用的增加,达到现实值的比率也会增加。关键词:LSTM,比特币,加密货币,神经网络,预测JEL代码:C53, C45, G10
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