路径积分蒙特卡罗方法和最大熵:导数估值问题的完整解决方案

M. Makivic
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引用次数: 2

摘要

只提供摘要形式。本文将路径积分蒙特卡罗方法与最大熵方法相结合,作为衍生证券定价问题的综合解决方案。路径积分蒙特卡洛方法依赖于基础证券从当前时间到合约到期日的完整历史的概率分布。在我们目前的实现中,Metropolis算法用于对底层安全性的历史(路径)的概率分布进行采样。路径积分方法的优点是可以在一次仿真中获得导数安全性的完整信息,包括其参数灵敏度。也可以在一次模拟中获得多个参数值的结果。路径积分蒙特卡罗方法的输入是底层随机过程的假定传播子。路径积分法对输入的随机过程具有灵活性,可以适用于欧美合同。导数估值可以看作是一个关于潜在随机过程的统计推断过程。在其最简单的形式,它归结为隐含波动率的计算。众所周知,隐含波动率矩阵可能包含执行价格和合约到期日之间的显著变化。这意味着通过单一波动参数对基础过程进行参数化与市场数据不一致。相反,我们制定了一种方法,该方法允许人们对底层的完整传播器产生完全一致的估计。
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Path integral Monte Carlo method and maximum entropy: a complete solution for the derivative valuation problem
Summary form only given. We propose a combination of the path-integral Monte Carlo method and the maximum entropy method as a comprehensive solution for the problem of pricing of derivative securities. The path-integral Monte Carlo approach relies on the probability distribution of the complete histories of the underlying security, from the present time to the contract expiration date. In our present implementation, the Metropolis algorithm is used to sample the probability distribution of histories (paths) of the underlying security. The advantage of the path integral approach is that complete information about the derivative security, including its parameter sensitivities, is obtained in a single simulation. It is also possible to obtain results for multiple values of parameters in a single simulation. The input to the path-integral Monte Carlo method is the assumed propagator for the stochastic process of the underlying. The path integral method is flexible about the input stochastic process and it can be used for both American and European contracts. Derivative valuation can be viewed as a statistical inference procedure about the underlying stochastic process. In its simplest form it reduces to the computation of implied volatility. It is known that the implied volatility matrix may contain significant variations across strike prices and contract maturities. This implies that parametrization of the underlying process via single volatility parameter is inconsistent with market data. Instead, we formulate an approach which allows one to generate a fully consistent estimate of the complete propagator for the underlying.
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