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首页> 外文期刊>Journal of Econometrics >Estimation of risk-neutral densities using positive convolution approximation
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Estimation of risk-neutral densities using positive convolution approximation

机译:使用正卷积近似估计风险中性密度

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This paper proposes a new nonparametric method for estimating the conditional risk-neutral density (RND) from a cross-section of option prices. The idea of the method is to fit option prices by finding the optimal density in a special admissible set. The admissible set consists of functions, each of which may be represented as a convolution of a positive kernel with another density. The method is termed the positive convolution approximation (PCA). The important properties of PCA are that it (1) iscompletely agnostic about the data generating process, (2) controls against overfilling while allowing for small samples. (3) always produces arbitrage-free estimators, and (4) is computationally simple. In a Monte-Carlo experiment, PCA is compared to several popular methods: mixtures of log-nonnals (with one, two, and three lognormals). Hennite polynomials, two regularization methods (for the RND and for implied volatilities), and sigma shape polynomials. PCA is found to be a promising alternative tothe competitors.
机译:本文提出了一种新的非参数方法,用于从期权价格的横截面估计条件风险中性密度(RND)。该方法的思想是通过在特殊的可允许集合中找到最优密度来适应期权价格。可允许集合由函数组成,每个函数都可以表示为具有另一个密度的正核的卷积。该方法称为正卷积近似(PCA)。 PCA的重要特性是:(1)完全不了解数据生成过程,(2)控制小样本时避免过度填充。 (3)总是产生无套利的估计量,(4)计算简单。在蒙特卡洛实验中,将PCA与几种流行的方法进行了比较:对数正态混合(具有一个,两个和三个对数正态)。 Hennite多项式,两种正则化方法(用于RND和隐含波动率)和sigma形状多项式。已发现PCA是竞争者的有前途的替代品。

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