Li Xiafei, Liang Chao, Ma Feng
School of Economics & Management, Southwest Jiaotong University, No. 111, North 1St Section, 2nd Ring Road, Chengdu, 610031 China.
Ann Oper Res. 2022 Apr 26:1-40. doi: 10.1007/s10479-022-04716-1.
This paper explores the effectiveness of predictors, including nine economic policy uncertainty indicators, four market sentiment indicators and two financial stress indices, in predicting the realized volatility of the S&P 500 index. We employ the MIDAS-RV framework and construct the MIDAS-LASSO model and its regime switching extension (namely, MS-MIDAS-LASSO). First, among all considered predictors, the economic policy uncertainty indices (especially the equity market volatility index) and the CBOE volatility index are the most noteworthy predictors. Although the CBOE volatility index has the best predictive ability for stock market volatility, its predictive ability has weakened during the COVID-19 epidemic, and the equity market volatility index is best during this period. Second, the MS-MIDAS-LASSO model has the best predictive performance compared to other competing models. The superior forecasting performance of this model is robust, even when distinguishing between high- and low-volatility periods. Finally, the prediction accuracy of the MS-MIDAS-LASSO model even outperforms the traditional LASSO strategy and its regime switching extension. Furthermore, the superior predictive performance of this model has not changed with the outbreak of the COVID-19 epidemic.
本文探讨了包括九个经济政策不确定性指标、四个市场情绪指标和两个金融压力指数在内的预测变量对标准普尔500指数实际波动率的预测效果。我们采用混频数据抽样回归波动率(MIDAS-RV)框架,构建了MIDAS-套索(LASSO)模型及其状态转换扩展模型(即MS-MIDAS-LASSO)。首先,在所有考虑的预测变量中,经济政策不确定性指数(尤其是股票市场波动率指数)和芝加哥期权交易所波动率指数是最值得注意的预测变量。虽然芝加哥期权交易所波动率指数对股票市场波动率具有最佳预测能力,但其预测能力在新冠疫情期间有所减弱,而股票市场波动率指数在此期间表现最佳。其次,与其他竞争模型相比,MS-MIDAS-LASSO模型具有最佳的预测性能。即使在区分高波动期和低波动期时,该模型卓越的预测性能依然稳健。最后,MS-MIDAS-LASSO模型的预测准确性甚至优于传统的套索策略及其状态转换扩展模型。此外,该模型卓越的预测性能并未随新冠疫情的爆发而改变。