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A computationally efficient state-space partitioning approach to pricing high-dimensional American options via dimension reduction

机译:一种通过计算有效的状态空间划分方法,通过降维对高维美国期权定价

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摘要

This paper studies the problem of pricing high-dimensional American options. We propose a method based on the state-space partitioning algorithm developed by Jin et al. (2007) and a dimension-reduction approach introduced by Li and Wu (2006). By applying the approach in the present paper, the computational efficiency of pricing high-dimensional American options is significantly improved, compared to the extant approaches in the literature, without sacrificing the estimation precision. Various numerical examples are provided to illustrate the accuracy and efficiency of the proposed method. Pseudcode for an implementation of the proposed approach is also included.
机译:本文研究了高维美国期权的定价问题。我们提出了一种基于Jin等人开发的状态空间划分算法的方法。 (2007)和李和吴(2006)引入的降维方法。通过采用本文中的方法,与现有文献中的现有方法相比,对高维美国期权定价的计算效率得到了显着提高,而又不影响估计精度。提供了各种数值示例来说明所提出方法的准确性和效率。还包括用于实现所提出方法的伪代码。

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