首页> 外文期刊>Journal of inverse and ill-posed problems >Maximum likelihood estimation of the parameters of a system of stochastic differential equations that models the returns of the index of some classes of hedge funds
【24h】

Maximum likelihood estimation of the parameters of a system of stochastic differential equations that models the returns of the index of some classes of hedge funds

机译:对一类对冲基金的指数收益建模的随机微分方程系统的参数的最大似然估计

获取原文
获取原文并翻译 | 示例
       

摘要

In this paper we study an inverse problem for a parabolic partial differential equation. The parabolic partial differential equation considered is the Fokker Planck equation associated to a system of stochastic differential equations and the inverse problem studied consists in finding from suitable data the values of the parameters that appear in the coefficients of this Fokker Planck equation. The data used in the reconstruction of the parameters are observations made at discrete times of the stochastic process solution of the system of stochastic differential equations That is, the data of the inverse problem are a "sample" taken at discrete times of some of the components of the random vector solution of the stochastic differential equations and not, as usual, observations made on the solution of the parabolic equation. The choice of the system of stochastic differential equations and of the data used in the inverse problem are motivated by applications in mathematical finance. The stochastic differential equations presented can be used to model the dynamics of the log-returns of the index of some classes of hedge funds, such as, for example, the so called "long short equity" hedge funds and of some auxiliary variables. The solution of the inverse problem proposed is obtained through the solution of a filtering and of an estimation problem The solution of these last two problems is based on the knowledge of the joint probability density function of the state variables of the model conditioned to the observations made and to the initial condition. This joint probability density function is solution of an initial value problem for the Kushnei equation that in the circumstances considered here can be written as a sequence of initial value problems for the Fokker Planck equation associated to the system of stochastic differential equations with appropriate initial conditions. An integral representation formula for this probability density function is derived and used to develop a numerical procedure to solve the estimation problem using the maximum likelihood method The Kushner equation provides the relation between the data and the Fokker Planck equation used to solve the inverse problem considered. The computational method proposed has been tested on synthetic data and the results obtained are presented Some auxiliary material useful to understand this paper including some animations and some numerical experiments can be found in the website http: //www. econ.univpm. it/recchioni/f inance/w5. A more general reference to the work in mathematical finance of the authors and of their coauthors is the website http: //www. econ.univpm. it/recchioni/finance.
机译:在本文中,我们研究了抛物型偏微分方程的反问题。所考虑的抛物线偏微分方程是与随机微分方程组相关的Fokker Planck方程,所研究的逆问题在于从合适的数据中找到出现在该Fokker Planck方程系数中的参数值。参数重建中使用的数据是在随机微分方程组的随机过程解的离散时间进行的观测。即,反问题的数据是在某些组件的离散时间获取的“样本”随机微分方程的随机矢量解,而不是像往常一样观察到抛物线方程的解。随机微分方程系统的选择和反问题中使用的数据的选择是受数学金融应用的推动。所提出的随机微分方程可用于对某些类别的对冲基金,例如所谓的“多头空头股票”对冲基金和一些辅助变量的指数的对数回报的动力学建模。提出的反问题的解决方案是通过滤波和估计问题的解决方案而获得的。后两个问题的解决方案是基于对模型状态变量的联合概率密度函数的了解,该函数的条件是观察到的条件。并恢复到初始状态。该联合概率密度函数是Kushnei方程的初值问题的解决方案,在这里考虑的情况下,它可以写为与具有适当初始条件的随机微分方程组相关的Fokker Planck方程的初值问题的序列。推导了该概率密度函数的积分表示公式,并将其用于开发使用最大似然法求解估计问题的数值程序。Kushner方程提供了数据与用于解决所考虑的反问题的Fokker Planck方程之间的关系。提出的计算方法已经在合成数据上进行了测试,并给出了获得的结果。一些有助于理解本文的辅助材料,包括一些动画和一些数值实验,可以在http:// www。网站上找到。 econ.univpm。它/ recchioni /财务/ w5。有关作者及其合著者在数学金融方面的工作的更一般的参考是网站http:// www。 econ.univpm。它/ recchioni /财务。

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