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The asymptotic properties of the estimators in a semiparametric regression model
by
Wu, Yi
, Ge, Meimei
, Wang, Xuejun
in
Asymptotic properties
/ Computer simulation
/ Consistency
/ Economic models
/ Estimators
/ Random errors
/ Random variables
/ Regression models
/ Weighting functions
2019
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Do you wish to request the book?
The asymptotic properties of the estimators in a semiparametric regression model
by
Wu, Yi
, Ge, Meimei
, Wang, Xuejun
in
Asymptotic properties
/ Computer simulation
/ Consistency
/ Economic models
/ Estimators
/ Random errors
/ Random variables
/ Regression models
/ Weighting functions
2019
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The asymptotic properties of the estimators in a semiparametric regression model
Journal Article
The asymptotic properties of the estimators in a semiparametric regression model
2019
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Overview
In this paper, we investigate the parametric component and nonparametric component estimators in a semiparametric regression model based on \\[ \\]-mixing random variables. The rth mean consistency, complete consistency, uniform rth mean consistency and uniform complete consistency are established under some suitable conditions. In addition, a simulation to study the numerical performance of the consistency of the nearest neighbor weight function estimators is provided. The results obtained in the paper improve the conditions in the literature and generalize the existing results of independent random errors to the case of \\[ \\]-mixing random errors.
Publisher
Springer Nature B.V
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