Pricing Discretely-Monitored Double Barrier Options with Small Probabilities of Execution

Vasileios E. Kontosakos, Keegan Mendonca, A. Pantelous, K. Zuev
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引用次数: 5

Abstract

Abstract In this paper, we propose a new stochastic simulation-based methodology for pricing discretely-monitored double barrier options and estimating the corresponding probabilities of execution. We develop our framework by employing a versatile tool for the estimation of rare event probabilities known as subset simulation algorithm. In this regard, considering plausible dynamics for the price evolution of the underlying asset, we are able to compare and demonstrate clearly that our treatment always outperforms the standard Monte Carlo approach and becomes substantially more efficient (measured in terms of the sample coefficient of variation) when the underlying asset has high volatility and the barriers are set close to the spot price of the underlying asset. In addition, we test and report that our approach performs better when it is compared to the multilevel Monte Carlo method for special cases of barrier options and underlying assets that make the pricing problem a rare event estimation. These theoretical findings are confirmed by numerous simulation results.
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具有小执行概率的离散监控双障碍期权定价
摘要本文提出了一种新的基于随机模拟的双障碍期权定价方法,并估计了相应的执行概率。我们通过使用一种通用工具来开发我们的框架,用于估计称为子集模拟算法的罕见事件概率。在这方面,考虑到标的资产价格演变的合理动态,我们能够比较并清楚地证明,当标的资产具有高波动性并且障碍设置接近标的资产的现货价格时,我们的处理总是优于标准蒙特卡罗方法,并且变得更加有效(以样本变异系数衡量)。此外,我们测试并报告了我们的方法在障碍期权和标的资产的特殊情况下比多层蒙特卡罗方法表现更好,使定价问题成为罕见事件估计。这些理论发现得到了大量仿真结果的证实。
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