Testing Alternative Measure Changes in Nonparametric Pricing and Hedging of European Options

Jamie Alcock, Godfrey Smith
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引用次数: 4

Abstract

Haley and Walker [Haley, M.R., & Walker, T. (2010). Journal of Futures Markets, 30, 983–1006] present the Euclidean and Empirical Likelihood nonparametric option pricing models as alternative tilts to Stutzer's [Stutzer, M. (1996). Journal of Finance, 51, 1633–1652] Canonical pricing method. We empirically test the comparative strengths of each of these methods using a large sample of traded options on the S&P100 Index. Furthermore, we explore an additional tilt based on Pearson's chi‐square, and derive and empirically test nonparametric delta hedges for each of these approaches. Differences in the pricing performance of the various tilts are a function of differences between the sample distribution and the real distribution of the underlying. When the sample distribution displays fatter (thinner) tails and/or higher (lower) volatility than the true distribution, the Euclidean (Pearson's chi‐square) model outperforms. Significantly, when these nonparametric methods utilize information contained in a small number of observed option prices they often outperform the implied volatility Black and Scholes [Black, F., & Scholes, M. (1973). Journal of Political Economy, 81, 637–654] model. These pricing performance differences do not translate into static and dynamic hedging performance differences. However, each of the nonparametric models induce an implied volatility smile and term structure that generally agree in form with the smile and term structure embedded in market prices. © 2013 Wiley Periodicals, Inc. Jrl Fut Mark 34:320–345, 2014
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欧式期权非参数定价与套期保值的替代计量变化检验
Haley and Walker [Haley, m.r., & Walker, T.(2010)]。欧几里得和经验似然非参数期权定价模型是对Stutzer的替代[M. Stutzer(1996)]。金融学报,51(5):693 - 693。我们使用标准普尔100指数的大量交易期权样本,对每种方法的比较优势进行了实证检验。此外,我们探索了基于皮尔逊卡方的额外倾斜,并为每种方法推导和经验检验了非参数delta对冲。各种倾斜的定价表现的差异是样本分布和基础的实际分布之间差异的函数。当样本分布显示出比真实分布更宽(更薄)的尾部和/或更高(更低)的波动性时,欧几里得(Pearson’s卡方)模型表现更好。值得注意的是,当这些非参数方法利用包含在少数观察到的期权价格中的信息时,它们通常优于隐含波动率Black和Scholes [Black, F., & Scholes, M.(1973)]。政治经济学,81,637-654]模型。这些定价表现差异不会转化为静态和动态对冲表现差异。然而,每一个非参数模型都会产生一个隐含波动率微笑和期限结构,这些隐含波动率微笑和期限结构在形式上通常与市场价格中的微笑和期限结构一致。©2013 Wiley期刊公司[j] [j], 2014
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