首页> 外文期刊>Open Journal of Applied Sciences >The Calibration of Some Stochastic Volatility Models Used in Mathematical Finance
【24h】

The Calibration of Some Stochastic Volatility Models Used in Mathematical Finance

机译:数学金融中一些随机波动率模型的标定

获取原文
           

摘要

Stochastic volatility models are used in mathematical finance to describe the dynamics of asset prices. In these models, the asset price is modeled as a stochastic process depending on time implicitly defined by a stochastic differential Equation. The volatility of the asset price itself is modeled as a stochastic process depending on time whose dynamics is described by a stochastic differential Equation. The stochastic differential Equations for the asset price and for the volatility are coupled and together with the necessary initial conditions and correlation assumptions constitute the model. Note that the stochastic volatility is not observable in the financial markets. In order to use these models, for example, to evaluate prices of derivatives on the asset or to forecast asset prices, it is necessary to calibrate them. That is, it is necessary to estimate starting from a set of data the values of the initial volatility and of the unknown parameters that appear in the asset price/volatility dynamic Equations. These data usually are observations of the asset prices and/or of the prices of derivatives on the asset at some known times. We analyze some stochastic volatility models summarizing merits and weaknesses of each of them. We point out that these models are examples of stochastic state space models and present the main techniques used to calibrate them. A calibration problem for the Heston model is solved using the maximum likelihood method. Some numerical experiments about the calibration of the Heston model involving synthetic and real data are presented.
机译:随机波动率模型在数学金融中用于描述资产价格的动态。在这些模型中,资产价格被建模为随机过程,具体取决于由随机微分方程式隐式定义的时间。资产价格本身的波动性被建模为一个随机过程,取决于时间,其动态由一个随机微分方程描述。资产价格和波动率的随机微分方程被耦合,并与必要的初始条件和相关假设一起构成了模型。请注意,在金融市场中观察不到随机波动。为了使用这些模型,例如,评估资产上的衍生产品价格或预测资产价格,必须对其进行校准。也就是说,有必要从一组数据开始估计资产价格/波动率动态方程中出现的初始波动率和未知参数的值。这些数据通常是在某些已知时间对资产价格和/或资产衍生产品价格的观察。我们分析了一些随机波动率模型,总结了它们各自的优缺点。我们指出,这些模型是随机状态空间模型的示例,并介绍了用于校准它们的主要技术。使用最大似然法解决了Heston模型的校准问题。提出了一些涉及合成和真实数据的Heston模型校准的数值实验。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号