STAILGAug 21, 2025

Probabilistic Forecasting Cryptocurrencies Volatility: From Point to Quantile Forecasts

arXiv:2508.15922v11 citationsh-index: 13DSAA
Originality Incremental advance
AI Analysis

This addresses the need for better risk management and trading strategies in cryptocurrency markets, though it is incremental as it adapts existing probabilistic techniques to a new domain.

The paper tackled the problem of forecasting cryptocurrency volatility by introducing probabilistic methods that estimate conditional quantiles from point forecasts of various base models, demonstrating that the QRS method applied to linear models on log-transformed data consistently outperforms alternatives for Bitcoin.

Cryptocurrency markets are characterized by extreme volatility, making accurate forecasts essential for effective risk management and informed trading strategies. Traditional deterministic (point) forecasting methods are inadequate for capturing the full spectrum of potential volatility outcomes, underscoring the importance of probabilistic approaches. To address this limitation, this paper introduces probabilistic forecasting methods that leverage point forecasts from a wide range of base models, including statistical (HAR, GARCH, ARFIMA) and machine learning (e.g. LASSO, SVR, MLP, Random Forest, LSTM) algorithms, to estimate conditional quantiles of cryptocurrency realized variance. To the best of our knowledge, this is the first study in the literature to propose and systematically evaluate probabilistic forecasts of variance in cryptocurrency markets based on predictions derived from multiple base models. Our empirical results for Bitcoin demonstrate that the Quantile Estimation through Residual Simulation (QRS) method, particularly when applied to linear base models operating on log-transformed realized volatility data, consistently outperforms more sophisticated alternatives. Additionally, we highlight the robustness of the probabilistic stacking framework, providing comprehensive insights into uncertainty and risk inherent in cryptocurrency volatility forecasting. This research fills a significant gap in the literature, contributing practical probabilistic forecasting methodologies tailored specifically to cryptocurrency markets.

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