多元随机波动-双跳模型在石油资产中的应用

M. Laurini, R. Mauad, F. Aiube
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引用次数: 5

摘要

我们提出了一个新的多元模型来捕捉石油价格和该行业公司回报中均值和条件方差跳跃的存在。该模型基于与均值和方差跳跃相关的共同因素的存在,因为它将每个资产的条件方差分解为多元随机波动结构中的共同因素加上特定临时因素的总和。利用马尔可夫链蒙特卡罗方法,通过贝叶斯方法进行估计。该模型可以恢复该行业观察到的价格变化和波动模式,并将其与2000-2015年期间观察到的事件联系起来。我们应用该模型来估计风险管理措施、对冲和投资组合配置,并与其他条件波动的多变量模型进行比较。根据结果,我们可以得出结论,所提出的模型在用于计算投资组合VaR时具有更好的性能,因为它没有拒绝在本工作中提出的某些规范下正确名义覆盖率的假设。进一步,我们得出结论,该模型可以通过包含石油公司资产(股票)和石油价格合约的投资组合的最优对冲比率来对冲石油价格风险。与基于GARCH模型的标准方法相比,我们的模型在该应用程序中表现良好
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Multivariate Stochastic Volatility-Double Jump Model: An Application for Oil Assets
We propose a new multivariate model to capture the presence of jumps in mean and conditional variance in the returns of oil prices and companies in this sector. The model is based on the presence of common factors associated with jumps in mean and variance, as it performs a decomposition of the conditional variance of each asset as the sum of the common factor plus a specific transitory factor in a multivariate stochastic volatility structure. The estimation is made through Bayesian methods using Markov Chain Monte Carlo. The model allows recovering the changes in prices and volatility patterns observed in this sector, relating the jumps with the events observed in the period 2000-2015. We apply the model to estimate risk management measures, hedging and portfolio allocation and performing a comparison with other multivariate models of conditional volatility. Based on the results, we may conclude that the proposed model has a better performance when used to calculate portfolio VaR, since it does not reject the hypothesis of correct nominal coverage with certain specifications presented in this work. Furthermore, we conclude that the model can be used to hedge oil price risks, through the optimal hedge ratio for a portfolio containing an oil company asset (stock) and the oil price contract. When compared to the standard methodology based on GARCH models, our model performs well in this application
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