Abstract

We propose the use of wavelet-based semiparametric models for forecasting the value-at-risk (VaR) and expected shortfall (ES) in the crude oil market. We compared the forecast outcomes across different time scales for three semiparametric models, three nonparametric, distribution-based, generalized, autoregressive, conditional, heteroskedasticity (GARCH) models, and three rolling-window models. We found that the GARCH model estimated by the Fissler and Ziegel (FZ) zero loss minimization (GARCH-FZ) model performs the best at forecasting the VaR and ES in the short term, whereas the hybrid model performs the best for mid- and long-term time scales. Thus, long-term investors should consider the hybrid model and short-term investors should employ the GARCH-FZ model in their risk management processes. Overall, our proposed wavelet-based semiparametric models outperform the other models tested for all time scales and market conditions. As such, we suggest that these models are considered for the management of crude oil price risk and in the development of energy policy.

Highlights

  • Crude oil is one of the most volatile financial assets and important industrial inputs in the global economy

  • We describe thethis estimation of the dynamic and expected shortfall (ES) measures following the Indexed by thethe functions and G2, the scoring function proposed by Fissler and Ziegel (FZ) [13] is measure

  • Understanding the risk of the crude oil market across time scales is essential for risk management and asset pricing

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Summary

Introduction

Crude oil is one of the most volatile financial assets and important industrial inputs in the global economy. (This ratio is based on the authors’ own calculations using the sample period of the present study.) In other words, the volatility of crude oil is three times that of the U.S stock market. Given this high volatility, managing and forecasting the risk associated with the crude oil market has become increasingly important. The main goal of this study was to develop an alternative approach to forecast the crude oil risk, especially in cases of extreme risk over time, helping investors and policymakers to quantify such risk

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