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AREC Home |
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| Empirical
Bayes Nonparametric Kernel Density Estimation Alan P. Ker and A. Tolga Ergün |
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| [download paper] [research papers listings] | |
| Abstract | |
| This
manuscript proposes using empirical Bayes techniques on estimated density
values from nonparametric kernels in attempts to exploit potential similarities
among a set of unknown densities. Our asymptotic theory and simulation
results suggest that the emipirical Bayes nonparamtetric kernel estimator
may be a viable alternative to the standard kernel estimator when a set
of possibly similar densities are being estimated. The strengths of the
proposed estimator are (i) it allows all types of kernel estimators; and
(ii) it does not require specification as to the degree or form of similarity.
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© 2007 Dept. of Agricultural & Resource Economics, The University of Arizona
Send comments or questions to arecweb@ag.arizona.edu
Last updated October 13, 2004
Document located at http://ag.arizona.edu/arec/pubs/researchpapers/abstract2004-05.html