基于GPU的加速方差缩减方法

Chuan-Hsiang Han, Yu-Tuan Lin
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引用次数: 2

摘要

蒙特卡罗模拟在计算金融中得到了广泛的应用。标准误差是衡量蒙特卡罗估计质量的基本概念,标准误差的平方定义为方差除以模拟总数。方差约简方法是一种基于概率分析的高效算法。GPU加速在增加模拟总数方面起着至关重要的作用。我们表明,将方差减少方法作为高效的软件算法与GPU加速作为并行计算硬件设备相结合,可以为期权价格评估和联合违约概率估计等金融应用程序带来巨大的速度提升。
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Accelerated variance reduction methods on GPU
Monte Carlo simulations have become widely used in computational finance. Standard error is the basic notion to measure the quality of a Monte Carlo estimator, and the square of standard error is defined as the variance divided by the total number of simulations. Variance reduction methods have been developed as efficient algorithms by means of probabilistic analysis. GPU acceleration plays a crucial role of increasing the total number of simulations. We show that the total effect of combining variance reduction methods as efficient software algorithms with GPU acceleration as a parallel-computing hardware device can yield a tremendous speed up for financial applications such as evaluation of option prices and estimation of joint default probabilities.
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