标准普尔指数市场粗糙波动率模型的历史分析

Sigurd Emil Rømer
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摘要

我们对选定的粗略波动率模型对标准普尔指数市场进行历史分析。根据我们的需求调整[27]的神经网络定价方法,我们为[14]中的粗糙Heston模型、[4]中的粗糙Bergomi模型以及后者的扩展版本训练神经网络。作为基准,我们还包括[24]中的经典Heston模型。通过对15年历史标准普尔指数期权价格的模型进行校准,我们首先使用粗糙波动率记录了一致的卓越结果。比较粗略的赫斯顿模型和粗略的Bergomi模型,我们还发现,虽然前者模型的校准稍微好一些,但后者模型的预测更稳健。我们的校准结果还阐明了一个结构性问题,即这两种模型(平均而言)在短到期时产生的曲率太小,在长到期时产生的偏度太小。使用一个扩展的粗糙Bergomi模型,其中微笑和倾斜的爆炸速率解耦,并没有解决这个问题。
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Historical Analysis of Rough Volatility Models to the SPX Market
We perform a historical analysis of selected rough volatility models to the SPX market. Tailoring the neural network pricing method of [27] to our needs, we train neural networks for the rough Heston model from [14], the rough Bergomi model from [4] as well as an extended version of the latter. As a benchmark we include also the classical Heston model from [24]. Calibrating the models across 15 years of historical SPX options prices we first and foremost document consistently superior results using rough volatility. Comparing rough Heston and rough Bergomi we also find that while the former model calibrates slightly better, the latter model produces more robust predictions. Our calibration results also illuminate a structural problem in that both of these models (on average) produces too little curvature at short expirations, too little skew at long expirations. Using an extended rough Bergomi model where the explosion rates of smile and skew are decoupled, did not resolve this problem.
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