Publication: Development of an ARIMA Model to Predict the Monthly Price of Bitcoin in USD
Type:
Article
Date
2024-12-04
Journal Title
Journal ISSN
Volume Title
Publisher
Faculty of Humanities and Sciences, SLIIT
Abstract
This study examines the bitcoin price in USD in the
world by developing a suitable ti me series model to
identi fy its future trends. This data set consists of
monthly bitcoin prices from August 2010 to July 2024.
It was found that the original series is not stati onary
and not seasonality. The stati onary was achieved by
the fi rst diff erence. Of the parsimonious models
identi fi ed based on the Parti al Autocorrelati on
Functi on (PACF) and Autocorrelati on Functi on (ACF)
of the stati onary series, an auto-regressive integrated
moving average (ARIMA) (2,1,2) model was identi fi ed
as the best-fi tt ed model. The signifi cance of the model
and its parameters and informati on criteria such
as the Akaike Informati on Criterion (AIC), Schwarz
Criterion, and log-likelihood was used to identi fy the
best-fi tt ed model. The model was trained using data
from August 2010 to March 2024. The residuals of
the model were found to be white noise. The mean
absolute percentage error (MAPE) for validati on data
is 7.09%. The percentage errors for the validati ng set
are all positi ve and varied from 3.5% to 12.9%. The
predicted Bitcoin price (USD) from August to October
2024 are $59947.88, $60308.7, and $60669.53.
Bitcoin price can be uti lized by market demand and
supply, regulatory environment, and technology
development.
Description
Keywords
ACF, Forecasting, ARIMA models, Bitcoin price, Time series analysis, PACF
