Abstract

This paper builds and implements multifactor stochastic volatility models for the international oil/energy markets (Brent oil and WTI oil) for the period 2011–2021. The main objective is to make step ahead volatility predictions for the front month contracts followed by an implication discussion for the market (differences) and observed data dependence important for market participants, implying predictability. The paper estimates multifactor stochastic volatility models for both contracts giving access to a long-simulated realization of the state vector with associated contract movements. The realization establishes a functional form of the conditional distributions, which are evaluated on observed data giving the conditional mean function for the volatility factors at the data points (nonlinear Kalman filter). For both Brent and WTI oil contracts, the first factor is a slow-moving persistent factor while the second factor is a fast-moving immediate mean reverting factor. The negative correlation between the mean and volatility suggests higher volatilities from negative price movements. The results indicate that holding volatility as an asset of its own is insurance against market crashes as well as being an excellent diversification instrument. Furthermore, the volatility data dependence is strong, indicating predictability. Hence, using the Kalman filter from a realization of an optimal multifactor SV model visualizes the latent step ahead volatility paths, and the data dependence gives access to accurate static forecasts. The results extend market transparency and make it easier to implement risk management including derivative trading (including swaps).

Highlights

  • IntroductionModels for the purpose of predicting the volatility of the fossil oil market

  • Persistence, mean reversion, asymmetry, and long memory are among the stylized facts

  • The features imply that the volatility is highly data-dependent, suggesting information from previous periods as well as a model mean that is linear and a volatility that is non-linear

Read more

Summary

Introduction

Models for the purpose of predicting the volatility of the fossil oil market. The adoption of any volatility model requires the ability to forecast future price movements. A risk manager will typically wish to know the contract volatility as maturity approaches for hedging purposes. The fact that volatility and energy price changes are inversely associated suggests portfolio diversification as well as market collapse insurance. The major stylized facts of asset, currency, and commodity price variations can be explained using SV models, which have a basic and intuitive framework. These models are not functions of purely observables enabling multiple shocks (simulations). Time-varying volatility is common, and market participants who understand the dynamic behavior of volatility are more likely to have accurate predictions about future prices and risks

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call