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Reducing component estimation for varying coefficient models
Authors:Tang Qingguo  Wang Jinde
Institution:1. Institute of Sciences, PLA University of Science and Technology , Nanjing, 210007, Peoples Republic of China;2. Department of Mathematics , Nanjing University , Nanjing, 210093, Peoples Republic of China tangqig@yahoo.com.cn;4. Department of Mathematics , Nanjing University , Nanjing, 210093, Peoples Republic of China
Abstract:The estimation problem for varying coefficient models has been studied by many authors. We consider the problem in the case that the unknown functions admit different degrees of smoothness. In this paper we propose a reducing component local polynomial method to estimate the unknown functions. It is shown that all of our estimators achieve the optimal convergence rates. The asymptotic distributions of our estimators are also derived. The established asymptotic results and the simulation results show that our estimators outperform the the existing two-step estimators when the coefficient functions admit different degrees of smoothness. We also develop methods to speed up the estimation of the model and the selection of the bandwidths.
Keywords:varying coefficient model  smoothness  reducing component estimation  asymptotic normality  optimal convergence rate
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