A technique is suggested for reducing the order of bias of kernel estimators by weighting the contributions that different data values make to the estimator. The method is developed initially in the context of density estimation, where, unlike the 'variable kernel' method proposed by Abramson, our approach does not involve using different bandwidths at different data values. Rather, it is a weighted-bootstrap version of the standard uniform-bootstrap method that is used to construct traditional kernel density estimators. The reduction in bias is achieved by biasing the bootstrap appropriately, in a global rather than local way. Our technique has a variety of different forms, each of which reduces the order of bias from the square to the fou...
Hjort and Glad (1995) present a method for semiparametric density estima tion. Relative to the ordin...
SUMMARY. Hjort and Glad (1995) present a method for semiparametric density estima-tion. Relative to ...
We introduce a data-perturbation method for reducing bias of a wide variety of density estimators, i...
A technique is suggested for reducing the order of bias of kernel estimators by weighting the contri...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
. A class of weighted-bootstrap techniques, called biasedbootstrap methods, is proposed. It is motiv...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
The paper introduces the idea of inadmissible kernels and shows that an Epanechnikov type kernel is ...
A class of weighted bootstrap techniques, called biased bootstrap or b-bootstrap methods, is introdu...
We propose a generalized smooth bootstrap scheme for estimating the bias By and mean square error My...
In general it is desirable to have unbiased estimators for parameters of a probability distribution ...
Smoothed bootstrap method is a useful method to approximates the bias of Kernel density estimation. ...
We consider many kernel-based density estimators, all theoretically improving bias from O(h2), as th...
Hjort and Glad (1995) present a method for semiparametric density estima tion. Relative to the ordin...
SUMMARY. Hjort and Glad (1995) present a method for semiparametric density estima-tion. Relative to ...
We introduce a data-perturbation method for reducing bias of a wide variety of density estimators, i...
A technique is suggested for reducing the order of bias of kernel estimators by weighting the contri...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
. A class of weighted-bootstrap techniques, called biasedbootstrap methods, is proposed. It is motiv...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
The paper introduces the idea of inadmissible kernels and shows that an Epanechnikov type kernel is ...
A class of weighted bootstrap techniques, called biased bootstrap or b-bootstrap methods, is introdu...
We propose a generalized smooth bootstrap scheme for estimating the bias By and mean square error My...
In general it is desirable to have unbiased estimators for parameters of a probability distribution ...
Smoothed bootstrap method is a useful method to approximates the bias of Kernel density estimation. ...
We consider many kernel-based density estimators, all theoretically improving bias from O(h2), as th...
Hjort and Glad (1995) present a method for semiparametric density estima tion. Relative to the ordin...
SUMMARY. Hjort and Glad (1995) present a method for semiparametric density estima-tion. Relative to ...
We introduce a data-perturbation method for reducing bias of a wide variety of density estimators, i...