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Inference under Heteroscedasticity of Unknown Form Using an Adaptive Estimator
Authors:Munir Ahmed  Muhammad Aslam  G. R. Pasha
Affiliation:1. Department of Statistics , Bahauddin Zakariya University , Multan , Pakistan aslamasadi@bzu.edu.pk;3. Department of Statistics , Bahauddin Zakariya University , Multan , Pakistan;4. BZU Sub-campus , D.G. Khan , Pakistan
Abstract:
The heteroscedasticity consistent covariance matrix estimators are commonly used for the testing of regression coefficients when error terms of regression model are heteroscedastic. These estimators are based on the residuals obtained from the method of ordinary least squares and this method yields inefficient estimators in the presence of heteroscedasticity. It is usual practice to use estimated weighted least squares method or some adaptive methods to find efficient estimates of the regression parameters when the form of heteroscedasticity is unknown. But HCCM estimators are seldom derived from such efficient estimators for testing purposes in the available literature. The current article addresses the same concern and presents the weighted versions of HCCM estimators. Our numerical work uncovers the performance of these estimators and their finite sample properties in terms of interval estimation and null rejection rate.
Keywords:Adaptive estimator  Estimated weighted least squares  HCCME  Heteroscedasticity-consistent interval estimator  Kernel weighted least squares  Null rejection rate  Size distortion
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