Pricing American options under partial observation of stochastic volatility

Fan Ye, Enlu Zhou
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引用次数: 4

Abstract

Stochastic volatility models capture the impact of time-varying volatility on the financial markets, and hence are heavily used in financial engineering. However, stochastic volatility is not directly observable in reality, but is only “partially” observable through the inference from the observed asset price. Most of the past research studied American option pricing in stochastic volatility models under the assumption that the volatility is fully observable, which often leads to overpricing of the option. In this paper, we treat the problem under the more realistic assumption of partially observable stochastic volatility, and propose a numerical solution method by extending the regression method and the martingale duality approach to the partially observable case. More specifically, we develop a filtering-based martingale duality approach that complements a lower bound on the option price with an approximate upper bound. Numerical experiments show that our method reduces overpricing of the option with a moderate computational cost.
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随机波动部分观察下的美式期权定价
随机波动率模型捕捉时变波动率对金融市场的影响,因此在金融工程中被大量使用。然而,随机波动在现实中是不能直接观察到的,而只能通过对观察到的资产价格的推断来“部分”观察到。以往的研究大多是在随机波动率模型下研究美式期权的定价,假设波动率是完全可观察的,这往往导致期权定价过高。本文在较为现实的部分可观测随机波动假设下处理该问题,并将回归方法和鞅对偶方法推广到部分可观测情况,提出了一种数值求解方法。更具体地说,我们开发了一种基于滤波的鞅对偶性方法,该方法用近似上界补充了期权价格的下界。数值实验表明,该方法以适度的计算成本减少了期权的超定价。
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