Leave-one-out least squares Monte Carlo algorithm for pricing Bermudan options

IF 1.8 4区 经济学 Q2 BUSINESS, FINANCE Journal of Futures Markets Pub Date : 2024-05-23 DOI:10.1002/fut.22515
Jeechul Woo, Chenru Liu, Jaehyuk Choi
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Abstract

The least squares Monte Carlo (LSM) algorithm proposed by Longstaff and Schwartz (2001) is widely used for pricing Bermudan options. The LSM estimator contains undesirable look-ahead bias, and the conventional technique of avoiding it requires additional simulation paths. We present the leave-one-out LSM (LOOLSM) algorithm to eliminate look-ahead bias without doubling simulations. We also show that look-ahead bias is asymptotically proportional to the regressors-to-paths ratio. Our findings are demonstrated with several option examples in which the LSM algorithm overvalues the options. The LOOLSM method can be extended to other regression-based algorithms that improve the LSM method.

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为百慕大期权定价的一离最小二乘蒙特卡洛算法
Longstaff 和 Schwartz(2001 年)提出的最小二乘蒙特卡罗(LSM)算法被广泛用于百慕大期权 的定价。LSM 估计包含不希望出现的前瞻偏差,而避免这种偏差的传统技术需要额外的模拟路径。我们提出了 "leave-one-out LSM (LOOLSM) "算法,可以在不加倍模拟的情况下消除前瞻偏差。我们还证明,前瞻偏差与回归器与路径的比率呈渐近正比。我们用几个期权实例证明了我们的发现,在这些实例中,LSM 算法对期权进行了高估。LOOLSM 方法可以扩展到其他基于回归的算法,从而改进 LSM 方法。
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来源期刊
Journal of Futures Markets
Journal of Futures Markets BUSINESS, FINANCE-
CiteScore
3.70
自引率
15.80%
发文量
91
期刊介绍: The Journal of Futures Markets chronicles the latest developments in financial futures and derivatives. It publishes timely, innovative articles written by leading finance academics and professionals. Coverage ranges from the highly practical to theoretical topics that include futures, derivatives, risk management and control, financial engineering, new financial instruments, hedging strategies, analysis of trading systems, legal, accounting, and regulatory issues, and portfolio optimization. This publication contains the very latest research from the top experts.
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