备选期权定价模型的实用比较分析

Natasha Latif, Shafqat Ali Shad, Muhammad Usman, Chandan Kumar, Bahman B Motii, MD Mahfuzer Rahman, Khuram Shafi, Zahra Idrees
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引用次数: 0

摘要

本文对欧洲看涨期权的三种不同的期权定价模型进行了定价,其中波动率是动态变化的,即是非恒定的。在期权定价的随机波动率(SV)模型中使用了封闭形式的近似技术,表明这些模型具有计算效率,并且与现有模型具有相同的性能水平。我们证明了sv模型(如Heston模型和基于高阶矩的随机波动率(MSV))的校准通常更快,更容易。在15个不同的指数期权数据集上,我们证明了纳入随机波动率的模型达到了与现有模型相当的准确性。此外,我们比较了每个模型在每个日期的In Sample和Out Sample定价误差。最后,对三种不同市场的模型定价进行比较,检验模型在不同市场的表现。关键词:期权定价模型,模拟,IndexOptions,随机波动率模型,损失函数http://:/www.sci-int.com/pdf/638279543859822650.pdf
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pragmatic Comparison Analysis of Alternative Option Pricing Models
In this paper, we price European Call three different option pricing models, where the volatility is dynamically changing i.e. non constant. In stochastic volatility (SV) models for option pricing a closed form approximation technique is used, indicating that these models are computationally efficient and have the same level of performance as existing ones. We show that the calibration of SV models, such as Heston model and the High Order Moment based Stochastic Volatility (MSV) is often faster and easier. On 15 different datasets of index options, we show that models which incorporates stochastic volatility achieves accuracy comparable with the existing models. Further, we compare the In Sample and Out Sample pricing errors of each model on each date. Lastly, the pricing of models is compared among three different market to check model performance in different markets. Keywords: Option Pricing Model, Simulations, Index Options, Stochastic Volatility Models, Loss Function http://www.sci-int.com/pdf/638279543859822650.pdf
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