Title of article :
James–Stein estimators for time series regression models
Author/Authors :
Senda، نويسنده , , Motohiro and Taniguchi، نويسنده , , Masanobu، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2006
Pages :
13
From page :
1984
To page :
1996
Abstract :
The least squares (LS) estimator seems the natural estimator of the coefficients of a Gaussian linear regression model. However, if the dimension of the vector of coefficients is greater than 2 and the residuals are independent and identically distributed, this conventional estimator is not admissible. James and Stein [Estimation with quadratic loss, Proceedings of the Fourth Berkely Symposium vol. 1, 1961, pp. 361–379] proposed a shrinkage estimator (James–Stein estimator) which improves the least squares estimator with respect to the mean squares error loss function. In this paper, we investigate the mean squares error of the James–Stein (JS) estimator for the regression coefficients when the residuals are generated from a Gaussian stationary process. Then, sufficient conditions for the JS to improve the LS are given. It is important to know the influence of the dependence on the JS. Also numerical studies illuminate some interesting features of the improvement. The results have potential applications to economics, engineering, and natural sciences.
Keywords :
James–Stein estimator , Least squares estimator , Gaussian stationary process , Time series regression model , Residual spectral density matrix , Regression spectrum , Mean squares error
Journal title :
Journal of Multivariate Analysis
Serial Year :
2006
Journal title :
Journal of Multivariate Analysis
Record number :
1558530
Link To Document :
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