One key issue in several astrophysical problems is the evaluation of the density probability function underlying an observational discrete data set. We here review two non-parametric density estimators which recently appeared in the astrophysical literature, namely the adaptive kernel density estimator and the Maximum Penalized Likelihood technique, and describe another method based on the wavelet transform. The efficiency of these estimators is tested by using extensive numerical simulations in the one-dimensional case. The results are in good agreement with theoretical functions and the three methods appear to yield consistent estimates. However, the Maximum Penalized Likelihood suffers from a lack of resolution and high computational cos...
We propose a new wavelet-based method for density estimation when the data are size-biased. More spe...
We propose and implement a density estimation procedure which begins by turning density estimation i...
Abstract—Density estimation for observational data plays an integral role in a broad spectrum of app...
One key issue in several astrophysical problems is the evaluation of the density probability functio...
Abstract. One key issue in several astrophysical prob-lems is the evaluation of the density probabil...
Tech ReportThe nonparametric density estimation method proposed in this paper is computationally fas...
Context. Galaxies are strongly influenced by their environment. Quantifying the galaxy den...
Context. Galaxies are strongly influenced by their environment. Quantifying the galaxy density is a ...
We study the performance of four density estimation techniques. Den-sity estimators are applied to s...
© 1999 Institute of Mathematical Statistics. The electronic version of this article is the complete ...
A new methodology for the application of wavelets in non-parametric density estimation is proposed. ...
The problem of estimating a density g based on a sample X1, X2, . . . , Xn from p = q * g is conside...
Standard wavelet-based density estimators may not retain some global properties of the curve, e.g. n...
In this paper we consider three empirical estimators (Kernel, adaptive Kernel and parametrizing fami...
Context. Galaxies are strongly influenced by their environment. Quantifying the galaxy density is a ...
We propose a new wavelet-based method for density estimation when the data are size-biased. More spe...
We propose and implement a density estimation procedure which begins by turning density estimation i...
Abstract—Density estimation for observational data plays an integral role in a broad spectrum of app...
One key issue in several astrophysical problems is the evaluation of the density probability functio...
Abstract. One key issue in several astrophysical prob-lems is the evaluation of the density probabil...
Tech ReportThe nonparametric density estimation method proposed in this paper is computationally fas...
Context. Galaxies are strongly influenced by their environment. Quantifying the galaxy den...
Context. Galaxies are strongly influenced by their environment. Quantifying the galaxy density is a ...
We study the performance of four density estimation techniques. Den-sity estimators are applied to s...
© 1999 Institute of Mathematical Statistics. The electronic version of this article is the complete ...
A new methodology for the application of wavelets in non-parametric density estimation is proposed. ...
The problem of estimating a density g based on a sample X1, X2, . . . , Xn from p = q * g is conside...
Standard wavelet-based density estimators may not retain some global properties of the curve, e.g. n...
In this paper we consider three empirical estimators (Kernel, adaptive Kernel and parametrizing fami...
Context. Galaxies are strongly influenced by their environment. Quantifying the galaxy density is a ...
We propose a new wavelet-based method for density estimation when the data are size-biased. More spe...
We propose and implement a density estimation procedure which begins by turning density estimation i...
Abstract—Density estimation for observational data plays an integral role in a broad spectrum of app...