Parallel implementation of Quantization methods for the valuation of swing options on GPGPU

G. Pagès, B. Wilbertz
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引用次数: 2

Abstract

The Quantization Tree algorithm has proven to be quite an efficient tool for the evaluation of financial derivatives with non-vanilla exercise rights as American-, Bermudan- or Swing options. Nevertheless, it relies heavily on a fast computation of the transition probabilities in the underlying Quantization Tree. Since this estimation is typically done by Monte-Carlo simulations, it is appealing to take advantage of the massive parallel computing capabilities of modern GPGPU-devices. We present in this article a parallel implementation of the transition probability estimation for a Gaussian 2-factor model in CUDA. Since we have to deal in this case with a huge amount of data and quite long MC-paths, it turned out that the naive path-wise parallel implementation is not optimal. We therefore present a time-layer wise parallelization which can better exploit the parallel computing power of GPGPU-devices by using faster memory structures.
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GPGPU上摆动期权估值量化方法的并行实现
量化树算法已被证明是一种相当有效的工具,用于评估具有非香草行权的金融衍生品,如美国期权、百慕大期权或摆动期权。然而,它在很大程度上依赖于底层量化树中转移概率的快速计算。由于这种估计通常是通过蒙特卡罗模拟完成的,因此利用现代gpgpu设备的大规模并行计算能力是很有吸引力的。在本文中,我们提出了一个在CUDA中并行实现高斯2因子模型的转移概率估计。因为在这种情况下我们必须处理大量的数据和相当长的mc路径,所以简单的路径并行实现并不是最优的。因此,我们提出了一种时间层并行化方法,通过使用更快的内存结构,可以更好地利用gpgpu设备的并行计算能力。
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