波动率周期建模:MF2-GARCH模型

Modelling Volatility Cycles: The MF2‐GARCH Model

Journal of Applied Econometrics · 2025
被引 3 · 同刊同年前 10%
人大 AABS 3

中文导读

提出一种新的多频GARCH模型,利用单成分GARCH模型预测误差的可预测性,在标普500和2100多只个股的长样本外预测中优于传统模型。

Abstract

ABSTRACT We propose a novel multiplicative factor multi‐frequency GARCH (MF2‐GARCH) model, which exploits the empirical fact that the daily standardized forecast errors of one‐component GARCH models are predictable by a moving average of past standardized forecast errors. In contrast to other multiplicative component GARCH models, the MF2‐GARCH features stationary returns, and long‐term volatility forecasts are mean‐reverting. When applied to the S&P 500, the new component model significantly outperforms the one‐component GJR‐GARCH, the GARCH‐MIDAS‐RV, and the log‐HAR model in long‐term out‐of‐sample forecasting. We illustrate the MF2‐GARCH's scalability by applying the new model to more than 2100 individual stocks in the Volatility Lab at NYU Stern.

MF2‐GARCH模型波动率成分模型长期波动率预测多频GARCH