Archive | 2019

Harnessing jump component for crude oil volatility forecasting in the presence of extreme shocks

 
 
 
 

Abstract


Oil markets are subject to extreme shocks (e.g. Iraq’s invasion of Kuwait), causing the oil market price exhibits extreme movements, called jumps (or spikes). These jumps \npose challenges on oil market volatility forecasting using conventional volatility dynamic models (e.g. GARCH model). This paper characterizes dynamics of jumps in oil market price using high frequency data from three perspectives: the probability (or intensity) of jump occurrence, the sign (e.g. positive or negative) of jumps, and the concurrence with stock market jumps. And then, the paper exploits predictive ability of these jump-related information for oil market volatility forecasting under the mixed data sampling (MIDAS) modeling framework. Our empirical results show that augmenting standard MIDAS model \nusing the three jump-related information significantly improves the accuracy of oil market volatility forecasting. The jump intensity and negative jump size are particularly useful for predicting future oil volatility. These results are widely consistent across a variety of robustness tests. This work provides new insights on how to forecast oil market volatility in the presence of extreme shocks.

Volume None
Pages None
DOI 10.1016/J.JEMPFIN.2019.01.004
Language English
Journal None

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