TY - JOUR
T1 - High frequency volatility of oil futures in China: Components, modeling, and prediction
AU - Hong, Yi
AU - Xu, Xiaofan
AU - Yang, Chen
N1 - Publisher Copyright:
© 2024 John Wiley & Sons Ltd.
PY - 2024/8/2
Y1 - 2024/8/2
N2 - This paper investigates the high-frequency volatility modeling and prediction for crude oil futures in China, a new asset class emerging in recent years. Two volatility measures, the realized variance ((Formula presented.)) and realized bi-power variations ((Formula presented.)) are constructed at various frequencies by virtue of 1-minute crude oil futures prices. The distinctive components of these volatility estimators are further identified to exploit the information contents in the in-sample explanatory power of the realized variance dynamics and the out-of-sample prediction of realized variance across different horizons, leading to four new HAR-RV-type models. First, the empirical results show that the continuous component of the weekly realized variance, representing investors' trading behavior in the medium-term, is the dominant factor driving up volatility trends in China's crude oil futures market over a range of market conditions. Second, the monthly jump component in realized variance presents the significant in-sample explanatory power, and yet marginally improves prediction performance in realized variance during the two out-of-sample periods. Finally, these results are robust toward various market/model setups, over day- and night-trading hours, and across a range of prediction horizons and relative to prediction benchmarks.
AB - This paper investigates the high-frequency volatility modeling and prediction for crude oil futures in China, a new asset class emerging in recent years. Two volatility measures, the realized variance ((Formula presented.)) and realized bi-power variations ((Formula presented.)) are constructed at various frequencies by virtue of 1-minute crude oil futures prices. The distinctive components of these volatility estimators are further identified to exploit the information contents in the in-sample explanatory power of the realized variance dynamics and the out-of-sample prediction of realized variance across different horizons, leading to four new HAR-RV-type models. First, the empirical results show that the continuous component of the weekly realized variance, representing investors' trading behavior in the medium-term, is the dominant factor driving up volatility trends in China's crude oil futures market over a range of market conditions. Second, the monthly jump component in realized variance presents the significant in-sample explanatory power, and yet marginally improves prediction performance in realized variance during the two out-of-sample periods. Finally, these results are robust toward various market/model setups, over day- and night-trading hours, and across a range of prediction horizons and relative to prediction benchmarks.
KW - China's crude oil futures
KW - continuity and jumps in variance
KW - high-frequency data
KW - realized variance
KW - volatility modeling and forecasting
UR - http://www.scopus.com/inward/record.url?scp=85200233910&partnerID=8YFLogxK
U2 - 10.1002/for.3173
DO - 10.1002/for.3173
M3 - Article
SN - 0277-6693
JO - Journal of Forecasting
JF - Journal of Forecasting
ER -