最小二乘蒙特卡罗算法中的偏差校正

IF 1.9 4区 经济学 Q2 ECONOMICS
François-Michel Boire, R. Mark Reesor, Lars Stentoft
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引用次数: 0

摘要

本文探讨了 Longstaff 和 Schwartz(Rev Financ Stud 14(1):113-147, 2001)美式期权定价算法中的预见偏差问题。利用标准回归理论,我们估计了由样本内过拟合引起的局部预见偏差的近似值。作为对 Kan 和 Reesor(Appl Math Financ 19(3):195-217,2012)之前确定的局部次优偏差估计方法的补充,递归局部偏差修正大大减少了样本内定价方法的整体偏差,其中估计的提前行使政策取决于未来的模拟现金流。该偏差减小方案适用于一般资产价格过程和平方可积分期权报酬,并且在广泛的期权特征范围内具有计算效率。广泛的数值实验表明,相对效率收益一般会随着行权机会频率和基函数数量的增加而增加,当使用少量样本路径时,会产生最有利的时间-精度权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Bias Correction in the Least-Squares Monte Carlo Algorithm

Bias Correction in the Least-Squares Monte Carlo Algorithm

This paper addresses the issue of foresight bias in the Longstaff and Schwartz (Rev Financ Stud 14(1):113–147, 2001) algorithm for American option pricing. Using standard regression theory, we estimate approximations of the local foresight bias caused by in-sample overfitting. Complementing the local sub-optimality bias estimator previously identified by Kan and Reesor (Appl Math Financ 19(3):195–217, 2012), recursive local bias corrections significantly reduce overall bias for the in-sample pricing approach where the estimated early-exercise policy depends on future simulated cash flows. The bias reduction scheme holds for general asset price processes and square-integrable option payoffs, and is computationally efficient across a wide range of option characteristics. Extensive numerical experiments show that the relative efficiency gain generally increases with the frequency of exercise opportunities and with the number of basis functions, producing the most favorable time-accuracy trade-offs when using a small number of sample paths.

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来源期刊
Computational Economics
Computational Economics MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
CiteScore
4.00
自引率
15.00%
发文量
119
审稿时长
12 months
期刊介绍: Computational Economics, the official journal of the Society for Computational Economics, presents new research in a rapidly growing multidisciplinary field that uses advanced computing capabilities to understand and solve complex problems from all branches in economics. The topics of Computational Economics include computational methods in econometrics like filtering, bayesian and non-parametric approaches, markov processes and monte carlo simulation; agent based methods, machine learning, evolutionary algorithms, (neural) network modeling; computational aspects of dynamic systems, optimization, optimal control, games, equilibrium modeling; hardware and software developments, modeling languages, interfaces, symbolic processing, distributed and parallel processing
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