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Comparison of methods to estimate option implied risk-neutral densities

机译:估计期权隐含风险中性密度的方法比较

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This paper is a comparison study of non-parametric techniques used to estimate risk-neutral densities from option prices. Cross-sectional option prices are first generated using Monte Carlo simulation. Using these simulated options data, risk-neutral densities of the underlying asset are estimated using three different non-parametric methods. The performances of these non-parametric estimation methods are then evaluated by comparing the estimated densities with the theoretical density. Unlike previous comparison studies that use traded options data without knowing the true risk-neutral densities, this study uses simulated option data with known data-generating processes and their corresponding risk-neutral densities, hence giving a real evaluation of the non-parametric estimation methods. This study finds that the kernel regression method yields the best performance, followed by the spline interpolation method and the neural network models.
机译:本文是对非参数技术的比较研究,该技术用于根据期权价格估算风险中性密度。首先使用蒙特卡洛模拟法生成横截面期权价格。使用这些模拟的期权数据,可以使用三种不同的非参数方法来估算基础资产的风险中性密度。然后,通过将估计的密度与理论密度进行比较,来评估这些非参数估计方法的性能。与之前使用不知道真实风险中性密度的交易期权数据的比较研究不同,本研究使用具有已知数据生成过程及其相应风险中性密度的模拟期权数据,从而对非参数估算方法进行了真实评估。研究发现,核回归方法产生最佳性能,其次是样条插值方法和神经网络模型。

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