{"title":"用ROSS恢复定理估计前瞻分布","authors":"Takuya Kiriu, Norio Hibiki","doi":"10.15807/JORSJ.62.83","DOIUrl":null,"url":null,"abstract":"The payoff of option is determined by the future price of underlying asset and therefore the option prices contain the forward looking information. Implied distribution is a forward looking distribution of the underlying asset derived from option prices. There are a lot of studies estimating implied distribution in the risk neutral probability framework. However, a risk neutral probability generally differs from a real world probability, which represents actual investors view about asset return. Recently, Ross (2015) has showed remarkable theorem, named “Recovery Theorem”. It enables us to estimate the real world probability distribution from option prices under a particular assumption about representative investor's risk preferences. However, it is not easy to derive the appropriate estimators because it is necessary to solve an ill-posed problem in estimation process. This paper discusses about the method to estimate a real world distribution accurately with the Recovery Theorem. The previous studies propose the methods to estimate the real world distribution, whereas they do not investigate on the estimation accuracy. Hence, we test the effectiveness of the Tikhonov method used by Audrino et al. (2015) in the numerical analysis with hypothetical data. We propose a new method to derive the more accurate solution by configuring the regularization term considering prior information and compare it with the Tikhonov method. Moreover, we discuss regularization parameter selection to get the accurate real world distribution. We find the following three points through the numerical analysis. (1) To stabilize the solution by introducing regularization term is an effective method in terms of estimating a real world distribution with the Recovery Theorem. (2) Proposed method can estimate a real world distribution more accurately than the Tikhonov method. 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引用次数: 6
摘要
期权的收益是由标的资产的未来价格决定的,因此期权价格包含了前瞻性信息。隐含分布是从期权价格推导出的标的资产的前瞻性分布。在风险中性概率框架下对隐含分布的估计已有大量的研究。然而,风险中性概率通常不同于现实世界的概率,它代表了投资者对资产回报的实际看法。最近,Ross(2015)提出了一个引人注目的定理,命名为“恢复定理”。它使我们能够在一个关于代表性投资者风险偏好的特定假设下,从期权价格估计真实世界的概率分布。然而,由于在估计过程中需要解决一个不适定问题,因此推导出合适的估计量并不容易。本文讨论了用恢复定理准确估计实际分布的方法。以往的研究提出了估计真实世界分布的方法,但没有对估计的精度进行研究。因此,我们使用假设数据测试Audrino et al.(2015)在数值分析中使用的Tikhonov方法的有效性。我们提出了一种新的方法,通过配置考虑先验信息的正则化项来获得更精确的解,并与Tikhonov方法进行了比较。此外,我们还讨论了正则化参数的选择,以获得准确的真实世界分布。通过数值分析,我们发现以下三点。(1)引入正则化项稳定解是利用恢复定理估计实际分布的一种有效方法。(2)与Tikhonov方法相比,该方法可以更准确地估计真实世界的分布。(3)即使期限少于国家,我们也可以提供相应的解决方案。
ESTIMATING FORWARD LOOKING DISTRIBUTION WITH THE ROSS RECOVERY THEOREM
The payoff of option is determined by the future price of underlying asset and therefore the option prices contain the forward looking information. Implied distribution is a forward looking distribution of the underlying asset derived from option prices. There are a lot of studies estimating implied distribution in the risk neutral probability framework. However, a risk neutral probability generally differs from a real world probability, which represents actual investors view about asset return. Recently, Ross (2015) has showed remarkable theorem, named “Recovery Theorem”. It enables us to estimate the real world probability distribution from option prices under a particular assumption about representative investor's risk preferences. However, it is not easy to derive the appropriate estimators because it is necessary to solve an ill-posed problem in estimation process. This paper discusses about the method to estimate a real world distribution accurately with the Recovery Theorem. The previous studies propose the methods to estimate the real world distribution, whereas they do not investigate on the estimation accuracy. Hence, we test the effectiveness of the Tikhonov method used by Audrino et al. (2015) in the numerical analysis with hypothetical data. We propose a new method to derive the more accurate solution by configuring the regularization term considering prior information and compare it with the Tikhonov method. Moreover, we discuss regularization parameter selection to get the accurate real world distribution. We find the following three points through the numerical analysis. (1) To stabilize the solution by introducing regularization term is an effective method in terms of estimating a real world distribution with the Recovery Theorem. (2) Proposed method can estimate a real world distribution more accurately than the Tikhonov method. (3) We can offer the appropriate solutions even if the number of maturities is less than that of states.
期刊介绍:
The journal publishes original work and quality reviews in the field of operations research and management science to OR practitioners and researchers in two substantive categories: operations research methods; applications and practices of operations research in industry, public sector, and all areas of science and engineering.