Score: 0

Time-Varying Factor-Augmented Models for Volatility Forecasting

Published: August 3, 2025 | arXiv ID: 2508.01880v3

By: Duo Zhang , Jiayu Li , Junyi Mo and more

Potential Business Impact:

Predicts money ups and downs better for trading.

Business Areas:
Predictive Analytics Artificial Intelligence, Data and Analytics, Software

Accurate volatility forecasts are vital in modern finance for risk management, portfolio allocation, and strategic decision-making. However, existing methods face key limitations. Fully multivariate models, while comprehensive, are computationally infeasible for realistic portfolios. Factor models, though efficient, primarily use static factor loadings, failing to capture evolving volatility co-movements when they are most critical. To address these limitations, we propose a novel, model-agnostic Factor-Augmented Volatility Forecast framework. Our approach employs a time-varying factor model to extract a compact set of dynamic, cross-sectional factors from realized volatilities with minimal computational cost. These factors are then integrated into both statistical and AI-based forecasting models, enabling a unified system that jointly models asset-specific dynamics and evolving market-wide co-movements. Our framework demonstrates strong performance across two prominent asset classes-large-cap U.S. technology equities and major cryptocurrencies-over both short-term (1-day) and medium-term (7-day) horizons. Using a suite of linear and non-linear AI-driven models, we consistently observe substantial improvements in predictive accuracy and economic value. Notably, a practical pairs-trading strategy built on our forecasts delivers superior risk-adjusted returns and profitability, particularly under adverse market conditions.

Country of Origin
🇺🇸 United States

Page Count
9 pages

Category
Quantitative Finance:
Statistical Finance