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Autor: You, Jinhong (Comienzo)
2 registros cumplieron la condición especificada en la base de información BIBCYT. ()
Registro 1 de 2, Base de información BIBCYT
Publicación seriada
Referencias AnalíticasReferencias Analíticas
Autor: You, Jinhong ; Chen, Gemai
Título: Semiparametric generalized least squares estimation in partially linear regression models with correlated errors
Páginas/Colación: p117-132, 16p
Journal of Statistical Planning and Inference Vol. 137 no. 1 January 2007
Información de existenciaInformación de existencia

Resumen
This paper is concerned with the estimation problem in partially linear regression models with serially correlated errors. The authors propose a semiparametric generalized least squares estimator (SGLSE) for the parametric component and show that it is asymptotically more efficient than the semiparametric ordinary least squares estimator (SOLSE) in terms of asymptotic covariance matrix. Other properties of this SGLSE including the asymptotic normality and the law of the iterated logarithm are established as well. A simulation study is conducted to examine the finite-sample properties of the proposed estimator and an empirical example is discussed.

Registro 2 de 2, Base de información BIBCYT
Publicación seriada
Referencias AnalíticasReferencias Analíticas
Autor: Zhou, Haibo ; You, Jinhong
Título: Statistical inference for a semiparametric measurement error regression model with heteroscedastic errors
Páginas/Colación: p2263-2276, 14p
Journal of Statistical Planning and Inference Vol. 137, no. 7 July 2007
Información de existenciaInformación de existencia

Resumen
Efficient inference for regression models requires that the heteroscedasticity be taken into account. We consider statistical inference under heteroscedasticity in a semiparametric measurement error regression model, in which some covariates are measured with errors. This paper has multiple components. First, we propose a new method for testing the heteroscedasticity. The advantages of the proposed method over the existing ones are that it does not need any nonparametric estimation and does not involve any mismeasured variables. Second, we propose a new two-step estimator for the error variances if there is heteroscedasticity. Finally, we propose a weighted estimating equation-based estimator (WEEBE) for the regression coefficients and establish its asymptotic properties. Compared with existing estimators, the proposed WEEBE is asymptotically more efficient, avoids undersmoothing the regressor functions and requires less restrictions on the observed regressors. Simulation studies show that the proposed test procedure and estimators have nice finite sample performance. A real data set is used to illustrate the utility of our proposed methods.

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

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