Parallelization and characterization of GARCH option pricing on GPUs

Ren-Shuo Liu, Yun-Cheng Tsai, Chia-Lin Yang
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引用次数: 4

Abstract

Option pricing is an important problem in computational finance due to the fast-growing market and increasing complexity of options. For option pricing, a model is required to describe the price process of the underlying asset. The GARCH model is one of the prominent option pricing models since it can model stochastic volatility of the underlying asset. To derive expected profit based on the GARCH model, tree-based simulations are one of the commonly used approaches. Tree-based GARCH option pricing is computing intensive since the tree grows exponentially, and it requires enormous floating point arithmetic operations. In this paper, we present the first work on accelerating the tree-based GARCH option pricing on GPUs with CUDA. As the conventional tree data structure is not memory access friendly to GPUs, we propose a new family of tree data structures which position concurrently accessed nodes in contiguous and aligned memory locations. Moreover, to reduce memory bandwidth requirement, we apply fusion optimization, which combines two threads into one to keep data with temporal locality in register files. Our results show 50× speedup compared to a multi-threaded program on a 4-core CPU.
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gpu上GARCH期权定价的并行化与表征
随着期权市场的快速发展和期权交易的日益复杂,期权定价成为计算金融中的一个重要问题。对于期权定价,需要一个模型来描述标的资产的价格过程。GARCH模型可以对标的资产的随机波动率进行建模,是期权定价的重要模型之一。基于GARCH模型的预期利润,基于树的模拟是常用的方法之一。基于树的GARCH期权定价是计算密集型的,因为树呈指数增长,并且需要大量的浮点算术运算。在本文中,我们提出了在gpu上使用CUDA加速基于树的GARCH期权定价的第一项工作。由于传统的树形数据结构对gpu的内存访问不友好,我们提出了一种新的树形数据结构,它将并发访问的节点定位在连续和对齐的内存位置。此外,为了减少内存带宽需求,我们采用融合优化,将两个线程合并为一个线程,在寄存器文件中保留具有时间局部性的数据。我们的结果显示,与4核CPU上的多线程程序相比,速度提高了50倍。
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