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On kernel density estimation near endpoints
Authors:Shunpu Zhang  Rohana J Karunamuni
Institution:

a Department of Mathematical Sciences, University of Alaska Fairbanks, Fairbanks, AK 99775, USA

b Department of Mathematical Sciences, University of Alberta, Edmonton, Alberta, Canada T6G 2G1

Abstract:In this paper, we consider the estimation problem of f(0), the value of density f at the left endpoint 0. Nonparametric estimation of f(0) is rather formidable due to boundary effects that occur in nonparametric curve estimation. It is well known that the usual kernel density estimates require modifications when estimating the density near endpoints of the support. Here we investigate the local polynomial smoothing technique as a possible alternative method for the problem. It is observed that our density estimator also possesses desirable properties such as automatic adaptability for boundary effects near endpoints. We also obtain an ‘optimal kernel’ in order to estimate the density at endpoints as a solution of a variational problem. Two bandwidth variation schemes are discussed and investigated in a Monte Carlo study.
Keywords:Density estimation  Boundary effects  Local polynomial smoothers  Bandwidth variation  Optimal kernel
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