Hedging derivative securities with genetic programming

Shu-Heng Chen, Wo-Chiang Lee, C. Yeh
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引用次数: 30

Abstract

One of the most recent applications of GP to finance is to use genetic programming to derive option pricing formulas. Earlier studies take the Black–Scholes model as the true model and use the artificial data generated by it to train and to test GP. The aim of this paper is to provide some initial evidence of the empirical relevance of GP to option pricing. By using the real data from S&P 500 index options, we train and test our GP by distinguishing the case in-the-money from the case out-of-the-money. Unlike most empirical studies, we do not evaluate the performance of GP in terms of its pricing accuracy. Instead, the derived GP tree is compared with the Black–Scholes model in its capability to hedge. To do so, a notion of tracking error is taken as the performance measure. Based on the post-sample performance, it is found that in approximately 20% of the 97 test paths GP has a lower tracking error than the Black–Scholes formula. We further compare our result with the ones obtained by radial basis functions and multilayer perceptrons and one-stage GP. Copyright  1999 John Wiley & Sons, Ltd.
用遗传规划方法对冲衍生证券
GP在金融领域的最新应用之一是利用遗传规划来推导期权定价公式。早期的研究将Black-Scholes模型作为真实模型,利用其生成的人工数据对GP进行训练和检验。本文的目的是为GP与期权定价的实证相关性提供一些初步证据。通过使用标准普尔500指数期权的真实数据,我们通过区分真实情况和真实情况来训练和测试我们的GP。与大多数实证研究不同,我们没有从定价准确性方面评估GP的表现。相反,推导出的GP树与布莱克-斯科尔斯模型在对冲能力方面进行了比较。为此,采用跟踪误差的概念作为性能度量。基于采样后的性能,我们发现在97个测试路径中,GP的跟踪误差比Black-Scholes公式低大约20%。我们进一步将所得结果与径向基函数、多层感知器和单阶段GP所得结果进行了比较。版权所有1999约翰威利父子有限公司
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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