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Quantitative error estimates for a least-squares Monte Carlo algorithm for American option pricing

机译:用于美国期权定价的最小二乘蒙特卡洛算法的量化误差估计

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摘要

We prove new error estimates for the Longstaff–Schwartz algorithm. We establish an (O(log^{frac{1}{2}}(N)N^{-frac{1}{2}})) convergence rate for the expected L 2 sample error of this algorithm (where N is the number of Monte Carlo sample paths), whenever the approximation architecture of the algorithm is an arbitrary set of L 2 functions with finite Vapnik–Chervonenkis dimension. Incorporating bounds on the approximation error as well, we then apply these results to the case of approximation schemes defined by finite-dimensional vector spaces of polynomials as well as that of certain nonlinear sets of neural networks. We obtain corresponding estimates even when the underlying and payoff processes are not necessarily almost surely bounded. These results extend and strengthen those of Egloff (Ann. Appl. Probab. 15, 1396–1432, 2005), Egloff et al. (Ann. Appl. Probab. 17, 1138–1171, 2007), Kohler et al. (Math. Finance 20, 383–410, 2010), Glasserman and Yu (Ann. Appl. Probab. 14, 2090–2119, 2004), Clément et al. (Finance Stoch. 6, 449–471, 2002) as well as others.
机译:我们证明了Longstaff-Schwartz算法的新误差估计。我们为此算法的预期L 2样本误差建立(O(log ^ {frac {1} {2}}(N)N ^ {-frac {1} {2}})收敛速度(其中N为(蒙特卡洛样本路径的数量),只要算法的近似体系是具有有限Vapnik–Chervonenkis维的L 2函数的任意集合。并结合近似误差的界限,然后将这些结果应用于由多项式的有限维向量空间以及某些非线性神经网络集定义的近似方案的情况。即使基本和支付过程不一定几乎一定会受到限制,我们也可以获得相应的估计。这些结果扩展并增强了Egloff(Ann。Appl。Probab.15,1396–1432,2005)和Egloff等人的结果。 (Ann。Appl。Probab。17,1138-1117,2007),Kohler等。 (Math。Finance 20,383–410,2010),Glasserman and Yu(Ann。Appl。Probab。14,2090-2119,2004),Clément等。 (Finance Stoch。6,449-471,2002)以及其他。

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