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Maximum Likelihood Estimation of Linear Stochastic Systems in the Class of Sequential Square-Root Orthogonal Filtering Methods

机译:序列平方根正交滤波方法中线性随机系统的最大似然估计

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Theoretical and applied aspects are considered for development of numerically stable adaptive methods of the parametric identification of linear discrete stochastic systems in the space of states. The unknown system parameters to be estimated can enter into any matrices specifying a system and into initial conditions. The class of gradient methods is first suggested, which is developed on the basis of orthogonal square-root implementations of the discrete Kalman filter with the use of the technology of sequential data processing. It is shown that the algorithms of the given type can be effectively used to solve ill-conditioned problems of parametric identification. A test example is drawn. The practical significance of the suggested class of methods is illustrated by an example of the solution for one of the financial mathematics problems - the identification of a multidimensional model of stochastic volatility.
机译:理论和应用方面被考虑用于状态空间中线性离散随机系统的参数辨识的数值稳定自适应方法的发展。可以估计的未知系统参数可以输入指定系统的任何矩阵和初始条件。首先提出了梯度方法的类别,它是在离散卡尔曼滤波器的正交平方根实现的基础上,利用顺序数据处理技术而开发的。结果表明,给定类型的算法可以有效地解决参数识别的病态问题。给出一个测试示例。所提出的一类方法的实际意义通过一个金融数学问题的解决方案示例(即多维随机波动性模型的识别)来说明。

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