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Calibration and Model Uncertainty of a Two-Factor Mean-Reverting Diffusion Model for Commodity Prices

机译:商品价格两因素均值回复扩散模型的校准和模型不确定性

摘要

With the development of various derivative instruments and index products, commodities have become a distinct asset class which can offer enhanced diversification benefits to the traditional asset allocation of stocks and bonds. In this thesis, we begin by discussing some of the key properties of commodity markets which distinguish them from bond and stock markets. Then, we consider the informational role of commodity futures markets. Since commodity prices exhibit mean-reverting behaviour, we will also review several mean-reversion models which are commonly used to capture and describe the dynamics of commodity prices. In Chapter 4, we focus on discussing a two-factor mean-reverting model proposed by Hikspoors and Jaimungal, as a means of providing additional degree of randomness to the long-run mean level. They have also suggested a method to extract the implied market prices of risk, after estimating both the risk-neutral and real-world parameters from the calibration procedure. Given the usefulness of this model, we are motivated to investigate the robustness of this calibration process by applying the methodology to simulated data. The capability to produce stable and accurate parameter estimates will be assessed by selecting various initial guesses for the optimization process. Our results show that the calibration method had a lot of difficulties in estimating the volatility and correlation parameters of the model. Moreover, we demonstrate that multiple solutions obtained from the calibration process would lead to model uncertainty in extracting the implied market prices of risk. Finally, by using historical crude oil data from the same time period, we can compare our calibration results with those obtained by Hikspoors and Jaimungal.
机译:随着各种衍生工具和指数产品的发展,商品已成为一种独特的资产类别,可以为传统的股票和债券资产分配提供增强的多元化收益。在本文中,我们首先讨论商品市场的一些关键属性,这些属性将它们与债券市场和股票市场区分开。然后,我们考虑商品期货市场的信息作用。由于商品价格表现出均值回归行为,因此我们还将回顾几种均值回归模型,这些模型通常用于捕获和描述商品价格的动态。在第4章中,我们将重点讨论Hikspoors和Jaimungal提出的两因素均值回归模型,以此为长期均值水平提供额外的随机度。他们还提出了一种方法,该方法可以从校准程序中估算风险中性参数和实际参数后,提取隐含的风险市场价格。鉴于此模型的有用性,我们有动机通过将方法应用于模拟数据来研究此校准过程的鲁棒性。通过为优化过程选择各种初始猜测,可以评估产生稳定和准确的参数估计值的能力。我们的结果表明,在估计模型的波动性和相关参数时,校准方法存在很多困难。此外,我们证明了从校准过程中获得的多种解决方案在提取隐含的风险市场价格时会导致模型不确定性。最后,通过使用同一时期的历史原油数据,我们可以将校准结果与Hikspoors和Jaimungal获得的校准结果进行比较。

著录项

  • 作者

    Chuah Jue Jun;

  • 作者单位
  • 年度 2013
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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