ARIMA MODEL FOR FORECASTING THE BITCOIN EXCHANGE RATE AGAINST THE USD

Vasantha Vinayakamoorthi, Saravanamutthu Jeyarajah, J. Suresh, Niroshanth Sathasivam
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Abstract

This study analysis forecasting the bitcoin exchange rate against the USD. The dataset selected for this study starts from January 2015 to June 2022. This study's methodology uses autoregressive integrated moving average forecasting (ARIMA). The overall outcomes of this study were gathered from the statistical software Minitab 21.1. The Box Jenkins approaches are also used to predict the best model. To determine the ARIMA model parameter, this study did autocorrelation function (ACF) and partial autocorrelation function (PACF) analyses. According to the Box-Cox transformation method, log transformation was selected. The outcome demonstrates that the seasonal with the regular difference in the Bitcoin exchange rate against the USD is a stationary data series. The forecasting model used in this study is ARIMA (1,1,0) (2,1,1)12. This predicted model is identified through the Mean squared error by comparing the other guessing ARIMA models. After the prediction, 5 Month bitcoin exchange rate against the USD. Investors will be able to estimate the bitcoin exchange rate against the USD with the use of this information, but volatility must also be properly watched. This will aid investors in making better investment decisions and increase profits. In future studies, better consider another exchange rate of BTC and software experts will develop such type of software based on ARIMA models for prediction.
预测比特币兑美元汇率的Arima模型
本研究分析预测比特币对美元的汇率。本研究选取的数据集为2015年1月至2022年6月。本研究的方法采用自回归综合移动平均预测(ARIMA)。本研究的总体结果由统计软件Minitab 21.1收集。Box Jenkins方法也用于预测最佳模型。为了确定ARIMA模型参数,本研究进行了自相关函数(ACF)和部分自相关函数(PACF)分析。根据Box-Cox变换方法,选择对数变换。结果表明,比特币兑美元汇率有规律差异的季节是一个平稳的数据序列。本研究使用的预测模型为ARIMA(1,1,0)(2,1,1)12。通过比较其他猜测ARIMA模型的均方误差来确定该预测模型。预测后,5个月比特币兑美元汇率。投资者将能够利用这些信息估计比特币兑美元的汇率,但也必须适当关注波动性。这将有助于投资者做出更好的投资决策,增加利润。在未来的研究中,最好考虑比特币的另一种汇率,软件专家将基于ARIMA模型开发这类软件进行预测。
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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