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A Two-Factor Price Process for Modeling Uncertainty in the Oil Prices

机译:一种用于在油价上建模不确定性的双因素价格过程

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The petroleum industry has recognized that a consistent probabilistic approach provides improved understanding andinsights into the investment decisions. Yet, although most oil & gas companies appreciate the impact of commodity prices on the value of their potential investments, few are implementing price models at the level of probabilistic sophistication and realism of their, say, subsurface models. We illustrate the implementation and calibration of the two-factor stochastic price model (Schwartz and Smith, 2000) that allows mean-reversion in short-term price deviations and uncertainty in the long-term equilibrium level. It provides advantages over more basic methods but is still simple enough to be communicated to corporate decision makers. The balance between realism and ease of communication of the model has led us to choose this model in favor of one-factor models, which assume that only one source of uncertainty contributes to the uncertainty in prices, or other multi-factor models where two or more factors contributes to the uncertainty in prices. Previously, a Kalman filter was used to estimate the model parameters based on historical spot and futures prices. We illustrate how current market information (such as futures prices and options on futures observed in commodity futures exchanges) can be utilized to assess the parameters of the two-factor price model. As opposed to the Kalman filter technique, the implied approach to parameter estimation is easy and intuitive, and it will generate estimates that are good enough for most valuation assessments.
机译:石油工业已认识到,一致的概率方法提供了改善的理解和险地进入投资决策。然而,虽然大多数石油公司升值商品价格对潜在投资价值的影响,但很少有人在概率的成熟和现实主义水平上实施价格模型,例如,他们的地下模型。我们说明了双因素随机价格型号(Schwartz和Smith,2000)的实施和校准,允许在短期价格偏差和长期均衡水平中的不确定性方面的平均逆转。它提供了超过更多基本方法的优势,但仍然足够简单,可以传达给企业决策者。该模型的现实主义与易于通信之间的平衡导致我们选择这种模型,支持单因素模型,这假设只有一个不确定性的来源贡献了价格的不确定性,或其他两个或者其他多因素模型更多因素有助于价格的不确定性。以前,使用卡尔曼滤波器根据历史点和期货价格来估计模型参数。我们说明了当前的市场信息(如商品期货交易所期望期货期货价格和期权),可用于评估双因素价格模型的参数。与卡尔曼滤波技术相反,参数估计的隐含方法很容易直观,并且它将产生足够好的估计对于大多数估值评估。

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