Bandwidth Selection for Weighted Kernel Density Estimation
Methodology
2011-11-28 v3
Abstract
In the this paper, the authors propose to estimate the density of a targeted population with a weighted kernel density estimator (wKDE) based on a weighted sample. Bandwidth selection for wKDE is discussed. Three mean integrated squared error based bandwidth estimators are introduced and their performance is illustrated via Monte Carlo simulation. The least-squares cross-validation method and the adaptive weight kernel density estimator are also studied. The authors also consider the boundary problem for interval bounded data and apply the new method to a real data set subject to informative censoring.
Cite
@article{arxiv.0709.1616,
title = {Bandwidth Selection for Weighted Kernel Density Estimation},
author = {Bin Wang and Xiaofeng Wang},
journal= {arXiv preprint arXiv:0709.1616},
year = {2011}
}
Comments
Will be rewritten for resubmission