Hjort and Glad (1995) present a method for semiparametric density estima tion. Relative to the ordinary kernel density estimator, this technique performs much better when a parametric vehicle distribution fits the data, and otherwise performs at broadly the same level. Jones, Linton and Nielsen (1995) present a somewhat similar method for density estimation which has higher order bias for all sufficiently smooth densities. In this paper, we combine the two methods. We show that, theoretically, the desired properties of general higher order bias allied with even better performance for an appropriate vehicle model are achieved. Simulations suggest that the new estimator realises only a little of its theoretical potential in practice for small...
We introduce a new class of nonparametric density estimators. It includes the classical kernel densi...
A new kernel density estimator for length biased data which derives from smoothing the nonparametric...
We show that maximum likelihood weighted kernel density estimation offers a unified approach to dens...
SUMMARY. Hjort and Glad (1995) present a method for semiparametric density estima-tion. Relative to ...
We consider many kernel-based density estimators, all theoretically improving bias from O(h2), as th...
We consider semiparametric asymmetric kernel density estimators when the unknown density has support...
We consider semiparametric asymmetric kernel density estimators when the unknown density has support...
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 ...
Kernel density estimates are frequently used, based on a second order kernel. Thus, the bias inheren...
Several old and new density estimators may have good theoretical performance, but are hampered by no...
The Kernel Density Estimation (KDE) method is seen here as the first step of the Expectation Maximiz...
Two methods are suggested for removing the problem of negativity of high-order kernel density estima...
AbstractTwo methods are suggested for removing the problem of negativity of high-order kernel densit...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
We introduce a new class of nonparametric density estimators. It includes the classical kernel densi...
A new kernel density estimator for length biased data which derives from smoothing the nonparametric...
We show that maximum likelihood weighted kernel density estimation offers a unified approach to dens...
SUMMARY. Hjort and Glad (1995) present a method for semiparametric density estima-tion. Relative to ...
We consider many kernel-based density estimators, all theoretically improving bias from O(h2), as th...
We consider semiparametric asymmetric kernel density estimators when the unknown density has support...
We consider semiparametric asymmetric kernel density estimators when the unknown density has support...
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 ...
Kernel density estimates are frequently used, based on a second order kernel. Thus, the bias inheren...
Several old and new density estimators may have good theoretical performance, but are hampered by no...
The Kernel Density Estimation (KDE) method is seen here as the first step of the Expectation Maximiz...
Two methods are suggested for removing the problem of negativity of high-order kernel density estima...
AbstractTwo methods are suggested for removing the problem of negativity of high-order kernel densit...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
We introduce a new class of nonparametric density estimators. It includes the classical kernel densi...
A new kernel density estimator for length biased data which derives from smoothing the nonparametric...
We show that maximum likelihood weighted kernel density estimation offers a unified approach to dens...