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首页> 外文期刊>Applied mathematical finance >Stochastic Correlation and Volatility Mean-reversion – Empirical Motivation and Derivatives Pricing via Perturbation Theory
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Stochastic Correlation and Volatility Mean-reversion – Empirical Motivation and Derivatives Pricing via Perturbation Theory

机译:随机相关性和波动率均值回复-基于摄动理论的经验动机和衍生产品定价

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摘要

The dependence structure is crucial when modelling several assets simultaneously. We show for a real-data example that the correlation structure between assets is not constant over time but rather changes stochastically, and we propose a multidimensional asset model which fits the patterns found in the empirical data. The model is applied to price multi-asset derivatives by means of perturbation theory. It turns out that the leading term of the approximation corresponds to the Black–Scholes derivative price with correction terms adjusting for stochastic volatility and stochastic correlation effects. The practicability of the presented method is illustrated by some numerical implementations. Furthermore, we propose a calibration methodology for the considered model.
机译:同时对多个资产建模时,依赖关系结构至关重要。我们以一个实际数据示例为例,资产之间的相关性结构不是随时间推移而是恒定不变的,而是随机变化的,并且我们提出了一个多维资产模型,该模型适合于经验数据中的模式。该模型通过微扰理论应用于价格多资产衍生产品。事实证明,近似的前导项对应于Black-Scholes衍生产品价格,其校正项针对随机波动率和随机相关效应进行了调整。通过一些数值实现说明了所提出方法的实用性。此外,我们为所考虑的模型提出了一种校准方法。

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