Estimating the Implied Risk Neutral Density

Stephen Figlewski
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引用次数: 237

Abstract

The market's risk neutral probability distribution for the value of an asset on a future date can be extracted from the prices of a set of options that mature on that date, but two key technical problems arise. In order to obtain a full well-behaved density, the option market prices must be smoothed and interpolated, and some way must be found to complete the tails beyond the range spanned by the available options. This paper develops an approach that solves both problems, with a combination of smoothing techniques from the literature modified to take account of the market's bid-ask spread, and a new method of completing the density with tails drawn from a Generalized Extreme Value distribution. We extract twelve years of daily risk neutral densities from S&P 500 index options and find that they are quite different from the lognormal densities assumed in the Black-Scholes framework, and that their shapes change in a regular way as the underlying index moves. Our approach is quite general and has the potential to reveal valuable insights about how information and risk preferences are incorporated into prices in many financial markets.
估计隐含风险中性密度
市场对未来某一日期资产价值的风险中性概率分布可以从该日期到期的一组期权的价格中提取出来,但出现了两个关键的技术问题。为了获得一个完全的良好的密度,期权市场价格必须被平滑和插值,并且必须找到一些方法来完成超出可用期权所跨越的范围的尾部。本文开发了一种解决这两个问题的方法,结合了文献中的平滑技术来考虑市场的买卖价差,以及一种从广义极值分布中绘制尾部来完成密度的新方法。我们从标准普尔500指数期权中提取了12年的每日风险中性密度,发现它们与布莱克-斯科尔斯框架中假设的对数正态密度有很大不同,它们的形状随着基础指数的变动而有规律地变化。我们的方法是相当普遍的,并且有可能揭示关于信息和风险偏好如何被纳入许多金融市场的价格的有价值的见解。
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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