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IMPROVED ESTIMATION FOR DYNAMIC LINEAR REGRESSION MODEL

机译:动态线性回归模型的改进估计

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摘要

This paper studies the preliminary test and shrinkage estimators based on the Kalman filtering procedure applied to a dynamic linear state space regression model. The performance of these estimators, with respect to mean square error, was investigated. It was revealed that under certain conditions both the preliminary test and shrinkage estimators proposed outperform the Kalman filter. This out-performance was not uniform. Further, the shrinkage estimator was found to be superior to the preliminary test estimator over large regions. The results presented in this paper invalidates the global minimum mean square error property of the Kalman filter that is widely used by the engineers for estimation of the parameters of linear state space models.
机译:本文研究了基于卡尔曼滤波程序的初步测试和收缩估计,并将其应用于动态线性状态空间回归模型。研究了这些估计器相对于均方误差的性能。结果表明,在某些条件下,初步测试和收缩估计均优于Kalman滤波器。这种表现并不统一。此外,发现收缩估计值在较大区域上要优于初步测试估计值。本文提出的结果使Kalman滤波器的全局最小均方误差特性无效,后者已被工程师广泛用于估计线性状态空间模型的参数。

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