For kernel-based estimators, smoothness conditions ensure that the asymptotic rate at which the bias goes to zero is determined by the kernel order. In a finite sample, the leading term in the expansion of the bias may provide a poor approximation. We explore the relation between smoothness and bias and provide estimators for the degree of the smoothness and the bias. We demonstrate the existence of a linear combination of estimators whose trace of the asymptotic mean squared error is reduced relative to the individual estimator at the optimal bandwidth. We examine the finite-sample performance of a combined estimator that minimizes the trace of the MSE of a linear combination of individual kernel estimators for a multimodal density. The co...
By establishing the asymptotic normality for the kernel smoothing estimator[beta]nof the parametric ...
A practical method is discussed for determining the amount of smoothing when using the kernel method...
Nonparametric estimation of the mode of a density or regression function via kernel methods is consi...
For local and average kernel based estimators, smoothness conditions ensure that the kernel order de...
Many asymptotic results for kernel-based estimators were established under some smoothness assumptio...
Many asymptotic results for kernel-based estimators were estab-lished under some smoothness assumpti...
Semiparametric and nonparametric estimators are becoming indispensable tools in applied econometric...
Results on nonparametric kernel estimators of density differ according to the assumed degree of dens...
Many asymptotic results for kernel-based estimators were established under some smoothness assumptio...
In this paper, we summarize results on convergence rates of various kernel based non- and semiparame...
In this paper, we summarize results on convergence rates of various kernel based non- and semiparame...
AbstractAccuracy of the normal approximation for Speckman's kernel smoothing estimator of the parame...
Kernel density estimators have been studied in great detail. In this note a new family of kernels, d...
Kernel smoothing refers to a general methodology for recovery of underlying structure in data sets. ...
The smoothing parameter or window width for a kernel estimator of a probability density at a point h...
By establishing the asymptotic normality for the kernel smoothing estimator[beta]nof the parametric ...
A practical method is discussed for determining the amount of smoothing when using the kernel method...
Nonparametric estimation of the mode of a density or regression function via kernel methods is consi...
For local and average kernel based estimators, smoothness conditions ensure that the kernel order de...
Many asymptotic results for kernel-based estimators were established under some smoothness assumptio...
Many asymptotic results for kernel-based estimators were estab-lished under some smoothness assumpti...
Semiparametric and nonparametric estimators are becoming indispensable tools in applied econometric...
Results on nonparametric kernel estimators of density differ according to the assumed degree of dens...
Many asymptotic results for kernel-based estimators were established under some smoothness assumptio...
In this paper, we summarize results on convergence rates of various kernel based non- and semiparame...
In this paper, we summarize results on convergence rates of various kernel based non- and semiparame...
AbstractAccuracy of the normal approximation for Speckman's kernel smoothing estimator of the parame...
Kernel density estimators have been studied in great detail. In this note a new family of kernels, d...
Kernel smoothing refers to a general methodology for recovery of underlying structure in data sets. ...
The smoothing parameter or window width for a kernel estimator of a probability density at a point h...
By establishing the asymptotic normality for the kernel smoothing estimator[beta]nof the parametric ...
A practical method is discussed for determining the amount of smoothing when using the kernel method...
Nonparametric estimation of the mode of a density or regression function via kernel methods is consi...