On density estimation with superkernels
Nikolai Ushakov and
Anastasia Ushakova
Journal of Nonparametric Statistics, 2012, vol. 24, issue 3, 613-627
Abstract:
In this article, we consider the problem of nonparametric density estimation in the case, when the original sample has a large size, but the data are given in a binned form, i.e. in the form of a histogram. Such situations are typical for many physical problems, in particular, in scanning electron microscopy and electron beam lithography. We study how superkernels can be used in such situations. It is shown that superkernels can be essentially superior over conventional kernels not only for very smooth densities. The problem of bandwidth and bin width selection is also considered.
Date: 2012
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DOI: 10.1080/10485252.2012.688969
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