An Investigation of the Predictability of Uncertainty Indices on Bitcoin Returns

Author:

Wang Jinghua1ORCID,Ngene Geoffrey M.2,Shi Yan3,Mungai Ann Nduati4

Affiliation:

1. Martin Tuchman School of Management, New Jersey Institute of Technology, 184-198 Central Ave, Newark, NJ 07103, USA

2. Stetson School of Business and Economics, Mercer University, Macon, GA 31201, USA

3. Computer Science and Software Engineering Department, College of Engineering, Mathematics and Science, University of Wisconsin-Platteville, Platteville, WI 53181, USA

4. Cameron School of Business, University of North Carolina Wilmington, 601 South College Street, Wilmington, NC 28403, USA

Abstract

Policymakers and portfolio managers pay keen attention to sources of uncertainties that drive asset returns and volatility. The influence of uncertainty on Bitcoin has the potential to drive fluctuations in the entire cryptocurrency market. We investigate the predictability of thirteen economic policy uncertainty indices on Bitcoin returns. Using the Random Forest machine learning algorithm, we find that Singapore’s economic policy uncertainty (EPU) has the strongest predictive power on Bitcoin returns, followed by financial crisis (FC) uncertainty and world trade uncertainty (WTU). We further categorize these uncertainties into different groups. Interestingly, the predictability of uncertainty indices on Bitcoin returns within the international trade group is stronger compared to other uncertainty categories. Additionally, we observed that internet-based uncertainty measures have more predictive power of Bitcoin returns than newspaper- and report-based measures. These results are robust using various additional machine learning methods. We believe that these findings could be valuable for policymakers and portfolio managers when making decisions related to uncertainty drivers of cryptocurrency prices and returns.

Funder

New Jersey Institute of Technology

Publisher

MDPI AG

Subject

Finance,Economics and Econometrics,Accounting,Business, Management and Accounting (miscellaneous)

Reference29 articles.

1. Can uncertainty indices predict Bitcoin prices? A revisited analysis using partial and multivariate wavelet approaches;Rehman;The North American Journal of Economic Finance,2019

2. Measuring economic policy uncertainty;Baker;The Quarterly Journal of Economics,2016

3. Using machine learning to detect misstatements;Bertomeu;Review of Accounting Studies,2021

4. Predicting Bitcoin returns: Comparing the roles of newspaper- and internet-based measures of uncertainty;Bouri;Finance Research Letters,2021

5. Random Forests;Breiman;Machine Learning,2001

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1. The Future of Bitcoin Price Predictions Integrating Deep Learning and the Hybrid Model Method;Proceedings of the 7th International Conference on Future Networks and Distributed Systems;2023-12-21

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