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Limiting bias-reduced Amoroso kernel density estimators for non-negative data
Authors:Gaku Igarashi  Yoshihide Kakizawa
Institution:1. Division of Policy and Planning Sciences, Faculty of Engineering, Information and Systems, University of Tsukuba, Tsukuba, Ibaraki, Japang-igarashi@sk.tsukuba.ac.jp;3. Faculty of Economics, Hokkaido University, Kita-ku, Sapporo, Japan
Abstract:The Amoroso kernel density estimator (Igarashi and Kakizawa 2017 Igarashi, G., and Y. Kakizawa. 2017. Amoroso kernel density estimation for nonnegative data and its bias reduction. Department of Policy and Planning Sciences Discussion Paper Series No. 1345, University of Tsukuba. Google Scholar]) for non-negative data is boundary-bias-free and has the mean integrated squared error (MISE) of order O(n? 4/5), where n is the sample size. In this paper, we construct a linear combination of the Amoroso kernel density estimator and its derivative with respect to the smoothing parameter. Also, we propose a related multiplicative estimator. We show that the MISEs of these bias-reduced estimators achieve the convergence rates n? 8/9, if the underlying density is four times continuously differentiable. We illustrate the finite sample performance of the proposed estimators, through the simulations.
Keywords:Amoroso kernel  asymmetric kernel  bias reduction  boundary bias problem  non-parametric density estimation  
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