We investigate the asymptotic mean squared error of kernel estimators of the intensity function of a spatial point process. We derive expansions for the bias and variance in the scenario that n independent copies of a point process in Rd are superposed. When the same bandwidth is used in all d dimensions, we show that an optimal bandwidth exists and is of the order n−1/(d+4) under appropriate smoothness conditions on the true intensity function
Point processes are random local finite sets of points in a space that are used for mod- elling and ...
33 pages, 27 figures, 2 tables.-- This is an Open Access article distributed under the terms of the ...
We consider the properties of the local polynomial estimators of a counting process intensity functi...
We investigate the asymptotic mean squared error of kernel estimators of the intensity function of ...
We investigate the asymptotic mean squared error of kernel estimators of the intensity function of a...
This article introduces a kernel estimator of the intensity function of spatial point processes taki...
We propose a new bandwidth selection method for kernel estimators of spatial point process intensity...
We apply the Abramson principle to define adaptive kernel estimators for the intensity function of a...
We propose a new bandwidth selection method for kernel estimators of spatial point process intensity...
We discuss and compare various approaches to the problem of bandwidth selection for kernel estimato...
In this paper, kernel function methods are considered for estimating the intensity function of a non...
A new variable bandwidth selector for kernel estimation is proposed. The application of this bandwid...
A new variable bandwidth selector for kernel estimation is proposed. The application of this bandwid...
AbstractIn this paper, kernel function methods are considered for estimating the intensity function ...
We study kernel estimation of highest density regions (HDR). Our main contributions are two-fold. Fi...
Point processes are random local finite sets of points in a space that are used for mod- elling and ...
33 pages, 27 figures, 2 tables.-- This is an Open Access article distributed under the terms of the ...
We consider the properties of the local polynomial estimators of a counting process intensity functi...
We investigate the asymptotic mean squared error of kernel estimators of the intensity function of ...
We investigate the asymptotic mean squared error of kernel estimators of the intensity function of a...
This article introduces a kernel estimator of the intensity function of spatial point processes taki...
We propose a new bandwidth selection method for kernel estimators of spatial point process intensity...
We apply the Abramson principle to define adaptive kernel estimators for the intensity function of a...
We propose a new bandwidth selection method for kernel estimators of spatial point process intensity...
We discuss and compare various approaches to the problem of bandwidth selection for kernel estimato...
In this paper, kernel function methods are considered for estimating the intensity function of a non...
A new variable bandwidth selector for kernel estimation is proposed. The application of this bandwid...
A new variable bandwidth selector for kernel estimation is proposed. The application of this bandwid...
AbstractIn this paper, kernel function methods are considered for estimating the intensity function ...
We study kernel estimation of highest density regions (HDR). Our main contributions are two-fold. Fi...
Point processes are random local finite sets of points in a space that are used for mod- elling and ...
33 pages, 27 figures, 2 tables.-- This is an Open Access article distributed under the terms of the ...
We consider the properties of the local polynomial estimators of a counting process intensity functi...