Forecasting Bitcoin Trends Based on the ARIMA Model
DOI:
https://doi.org/10.54097/bt8be203Keywords:
ARIMA model, Bitcoin trends, forecasting.Abstract
This research paper aims to conduct a time series forecasting of the bitcoin mean weighted price using the data from Kaggle. The data has a one-minute resolution and includes the following variables: timestamp, open, high, low, close, volume (BTC), volume (currency), and weighted price. Data analysis was achieved using R, a statistical computing and graphics programming language. The main findings of this research paper were that the bitcoin mean weighted price had a strong upward trend and exhibited high volatility over time. The time series also had weak seasonal and significant random components, indicating periodic fluctuations and noise in the data. Four years of data were used to estimate the mean change for the following month. The results indicate that while the expected value may rise somewhat, it will do so with significant variability and unpredictability. The main implications of this research paper were that there was a potential for profit or loss depending on the timing and strategy of buying or selling bitcoins.
Downloads
References
Vranken H. Sustainability of bitcoin and blockchains. Current opinion in environmental sustainability,2017 28: 1 - 9.
Schilling L., Uhlig H. Some simple bitcoin economics. Journal of Monetary Economics, 2019, 106: 16 - 26.
Ciaian P., Miroslava R., Artis K. The economics of BitCoin price formation. Applied economics, 2016, 48 (19): 1799 - 1815.
Monghwan S, Geonwoo K. Hybrid Forecasting Models Based on the Neural Networks for the Volatility of Bitcoin. Applied Sciences, 2020, 10 (14): 4768.
Shah J., Darsh V., and Manan S. A comprehensive review on multiple hybrid deep learning approaches for stock prediction. Intelligent Systems with Applications, 2022, 200111.
Petrusevich D. Time series forecasting using high order arima functions. International Multidisciplinary Scientific GeoConference: SGEM, 2019, 19 (2): 673 - 679.
Qihang M. Comparison of ARIMA, ANN and LSTM for stock price prediction. E3S Web of Conferences,2020, 218.
Sattarov T., Herurkar D., Hees J. Explaining Anomalies using Denoising, 2023.
Xiaoge Z. Towards risk-aware artificial intelligence and machine learning systems: An overview. Decision Support Systems, 2022, 159: 113800.
Behzad M. Generalization performance of support vector machines and neural networks in runoff modeling. Expert Systems with applications, 2009, 36 (4): 7624 - 7629.
Tahira Bano Q., Javed A., Ali Anam J. H. Exploring the Forecasting Performance of ARIMA-GARCH-Family and Regime Switching ARIMA Models for Industrial Manufacturing in Pakistan. Competitive Social Science Research Journal, 2022, 3 (2): 676 - 693.
Downloads
Published
Issue
Section
License
Copyright (c) 2024 Highlights in Science, Engineering and Technology

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.







