Abstract
Ensemble learning techniques continue to show greater interest in forecasting the volatility of cryptocurrency assets. In particular, XGBoost, an ensemble learning technique, has been shown in recent studies to provide the most accurate forecast of Bitcoin volatility. However, the performance of XGBoost largely depends on the tuning of its hyperparameters. In this study, we examine the effectiveness of the Bayesian optimization method for tuning the XGBoost hyperparameters for Bitcoin volatility forecasting. We chose to explore this method rather than the most commonly used manual, grid, and random hyperparameter choices due to its ability to predict the most promising areas of hyperparameter spaces through exploitation and exploration using acquisition functions, as well as its ability to minimize error with a reduced amount of time and resources required to find an optimal configuration. The obtained XGBoost configuration improves the forecast accuracy of Bitcoin volatility. Our empirical results, based on letting the data speak for itself, could be used for a comparative study on Bitcoin volatility forecasting. This would also be important for volatility trading, option pricing, and managing portfolios related to Bitcoin.
| Original language | English |
|---|---|
| Article number | 487 |
| Journal | Journal of Risk and Financial Management |
| Volume | 18 |
| Issue number | 9 |
| DOIs | |
| Publication status | Published - Sept 2025 |
| Externally published | Yes |
Keywords
- Bayesian optimization
- Bitcoin volatility
- XGBoost
- hyperparameters
ASJC Scopus subject areas
- Accounting
- Business, Management and Accounting (miscellaneous)
- Finance
- Economics and Econometrics