Polynomials Shrinkage Estimators of a Multivariate Normal Mean
Abstract
In this work, the estimation of the multivariate normal mean by different classes of shrinkage estimators is investigated. The risk associated with the balanced loss function is used to compare two estimators. We start by considering estimators that generalize the James-Stein estimator and show that these estimators dominate the maximum likelihood estimator (MLE), therefore are minimax, when the shrinkage function satisfifies some conditions. Then, we treat estimators of polynomial form and prove the increase of the degree of the polynomial allows us to build a better estimator from the one previously constructed.References
M. Amin, M. Nauman Akram, and M. Amanullah, On the James-Stein estimator for the Poisson regression model, Comm. Statist. Simulation Comput., pp. 1–14, 2020.
F. Arnold Steven, The theory of linear models and multivariate analysis, John Wiley and Sons, Inc., pp. 9–10, 1981.
A. Benkhaled, and A. Hamdaoui, General classes of shrinkage estimators for the multivariate normal mean with unknown variance: Minimaxity and limit of risks ratios, Kragujevac J. Math., vol. 46, pp. 193–213, 2019.
H. Guikai, L. Qingguo, and Y. Shenghua, Risk Comparison of improved estimators in a linear regression model with multivariate errors under Balanced Loss Function, Journal of Applied Mathematics, vol. 354, pp. 1–7, 2014.
A. Hamdaoui, A. Benkhaled, and N. Mezouar, Minimaxity and limits of risks ratios of shrinkage estimators of a multivariate normal mean in the Bayesian case, Stat., Optim. Inf. Comput., vol. 8(2), pp. 507–520, 2020.
A. Hamdaoui, A. Benkhaled, and M. Terbeche, Baranchick-type estimators of a multivariate normal mean under the general quadratic loss function, Journal of Siberian Federal University. Mathematics and Physics., vol. 13(5), pp. 608–621, 2020.
M. Jafari Jozani, A. Leblan, and E. Marchand, On continuous distribution functions, minimax and best invariant estimators and integrated balanced loss functions, Canad. J. Statist., vol. 42, pp. 470–486, 2014.
W. James, and C. Stein, Estimation of quadratique loss, Proc 4th Berkeley Symp, Math. Statist.Prob, Univ of California Press, Berkeley., vol. 1 , pp. 361-379, 1961.
H. Karamikabir, and M. Afsahri, Generalized Bayesian shrinkage and wavelet estimation of location parameter for spherical distribution under balanced-type loss: Minimaxity and admissibility, J. Multivariate Anal., vol. 177, pp. 110–120, 2020.
H. Karamikabir, M. Afshari, and M. Arashi, Shrinkage estimation of non-negative mean vector with unknown covariance under balance loss, Journal of Inequalities and Applications, pp, 1–11, 2018.
N. Sanjari Farsipour, and A. Asgharzadeh, Estimation of a normal mean relative to balanced loss functions, Statistical Papers, vol. 45, pp. 279–286, 2004.
K. Selahattin, and D. Issam, The optimal extended balanced loss function estimators, J. Comput. Appl. Math., vol. 345, pp. 86-98, 2019.
C. Stein, Estimation of the mean of a multivariate normal distribution, Ann. Statis., vol. 9(6), pp. 1135–1151, 1981.
C. Stein, Inadmissibilty of the usual estimator for the mean of a multivariate normal distribution, Proc 3th Berkeley Symp, Math. Statist. Prob. Univ. of California Press, Berkeley, vol. 1, pp. 197–206, 1956.
B. Yuzba, M. Arashi, and S. Ejaz, Ahmed, Shrinkage estimation strategies in generalized ridge regression models: Low/High-dimension regime, Int. Stat. Rev., pp. 1–23, 2020.
A. Zellner, Bayesian and non-Bayesian estimation using balanced loss functions, In: Berger, J.O., Gupta, S.S. (eds.) Statistical Decision Theory and Methods, Volume V, pp. 337–390. Springer, New York 1994.
S. Zinodiny, S. Leblan, and S. Nadarajah, Bayes minimax estimation of the mean matrix of matrix-variate normal distribution under balanced loss function, Statist. Probab. Lett., vol. 125, pp. 110–120, 2017.
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