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High-Dimensional Regression on Sparse Grids Applied to Pricing Moving Window Asian Options

机译:稀疏网格上的高维回归应用于移动窗口亚洲期权的定价

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The pricing of moving window Asian option with an early exercise feature is considered a challenging problem in option pricing. The computational challenge lies in the unknown optimal exercise strategy and in the high dimensionality required for approximating the early exercise boundary. We use sparse grid basis functions in the Least Squares Monte Carlo approach to solve this “curse of dimensionality” problem. The resulting algorithm provides a general and convergent method for pricing moving window Asian options. The sparse grid technique presented in this paper can be generalized to pricing other high-dimensional, early-exercisable derivatives.
机译:具有早期行使功能的移动窗口亚洲期权的定价被认为是期权定价中的一个具有挑战性的问题。计算上的挑战在于未知的最佳运动策略以及逼近早期运动边界所需的高维度。我们在最小二乘蒙特卡洛方法中使用稀疏网格基础函数来解决此“维数诅咒”问题。结果算法为移动窗口亚洲期权定价提供了一种通用且收敛的方法。本文介绍的稀疏网格技术可以推广到其他高维,可早期执行的衍生产品定价。

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