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首页> 外文期刊>International journal of theoretical and applied finance >AMERICAN OPTION PRICING WITH REGRESSION: CONVERGENCE ANALYSIS
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AMERICAN OPTION PRICING WITH REGRESSION: CONVERGENCE ANALYSIS

机译:与回归的美国期权定价:收敛分析

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摘要

The Longstaff-Schwartz (LS) algorithm is a popular least square Monte Carlo method for American option pricing. We prove that the mean squared sample error of the LS algorithm with quasi-regression is equal to c(1)/N asymptotically,(a) where c(1) > 0 is a constant, N is the number of simulated paths. We suggest that the quasi-regression based LS algorithm should be preferred whenever applicable. Juneja & Kalra (2009) and Bolia & Juneja (2005) added control variates to the LS algorithm. We prove that the mean squared sample error of their algorithm with quasi-regression is equal to c(2)/N asymptotically, where c(2) > 0 is a constant and show that c(2) < c(1) under mild conditions. We revisit the method of proof contained in Clement et al. [E. Clement, D. Lamberton & P. Protter (2002) An analysis of a least squares regression method for American option pricing, Finance and Stochastics, 6 449-471], but had to complete it, because of a small gap in their proof, which we also document in this paper.
机译:Longstaff-Schwartz(LS)算法是一种适用于美国期权定价的流行最不平方的蒙特卡罗方法。我们证明了具有准回归的LS算法的平均平方误差等于C(1)/ n渐近上,(a)其中C(1)> 0是常数,n是模拟路径的数量。我们建议在适用时,应优选基于准回归的LS算法。 Juneja&Kalra(2009)和Bolia&Juneja(2005)增加了对LS算法的控制变化。我们证明了与准回归的算法的平均平方样本误差等于C(2)/ n渐近的,其中C(2)> 0是常数,并显示在温和下的C(2)

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