Fast Greeks by Algorithmic Differentiation

Luca Capriotti
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引用次数: 64

Abstract

We show how Algorithmic Differentiation can be used to implement efficiently the Pathwise Derivative method for the calculation of option sensitivities with Monte Carlo. The main practical difficulty of the Pathwise Derivative method is that it requires the differentiation of the payout function. For the type of structured options for which Monte Carlo simulations are usually employed, these derivatives are typically cumbersome to calculate analytically, and too time consuming to evaluate with standard finite-differences approaches. In this paper we address this problem and show how Algorithmic Differentiation can be employed to calculate very efficiently and with machine precision accuracy these derivatives. We illustrate the basic workings of this computational technique by means of simple examples, and we demonstrate with several numerical tests how the Pathwise Derivative method combined with Algorithmic Differentiation – especially in the adjoint mode – can provide speed-ups of several orders of magnitude with respect to standard methods.
快速希腊人的算法微分
我们展示了如何使用算法微分来有效地实现蒙特卡罗期权敏感性计算的路径导数方法。路径导数法的主要实际困难在于它需要支付函数的微分。对于通常采用蒙特卡罗模拟的结构化期权类型,这些导数通常难以进行解析计算,并且使用标准有限差分方法进行评估太耗时。在本文中,我们解决了这个问题,并展示了如何使用算法微分来非常有效地计算这些导数,并具有机器精度。我们通过简单的例子说明了这种计算技术的基本工作原理,并通过几个数值测试证明了路径导数方法与算法微分相结合-特别是在伴随模式下-可以提供相对于标准方法的几个数量级的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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