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Weighted Profile Least Squares Estimation for a Panel Data Varying-Coefficient Partially Linear Model

Weighted Profile Least Squares Estimation for a Panel Data Varying-Coefficient Partially Linear Model
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摘要 This paper is concerned with inference of panel data varying-coefficient partially linear models with a one-way error structure. The model is a natural extension of the well-known panel data linear model (due to Baltagi 1995) to the setting of semiparametric regressions. The authors propose a weighted profile least squares estimator (WPLSE) and a weighted local polynomial estimator (WLPE) for the parametric and nonparametric components, respectively. It is shown that the WPLSE is asymptotically more efficient than the usual profile least squares estimator (PLSE), and that the WLPE is also asymptotically more efficient than the usual local polynomial estimator (LPE). The latter is an interesting result. According to Ruckstuhl, Welsh and Carroll (2000) and Lin and Carroll (2000), ignoring the correlation structure entirely and "pretending" that the data are really independent will result in more efficient estimators when estimating nonparametric regression with longitudinal or panel data. The result in this paper shows that this is not true when the design points of the nonparametric component have a closeness property within groups. The asymptotic properties of the proposed weighted estimators are derived. In addition, a block bootstrap test is proposed for the goodness of fit of models, which can accommodate the correlations within groups illustrate the finite sample performances of the Some simulation studies are conducted to proposed procedures.
出处 《Chinese Annals of Mathematics,Series B》 SCIE CSCD 2010年第2期247-272,共26页 数学年刊(B辑英文版)
基金 supported by the Leading Academic Discipline Program 211 Project for Shanghai University of Finance and Economics (the 3rd phase) (No.B803) the Shanghai Leading Academic Discipline Project (No.B210)
关键词 SEMIPARAMETRIC Panel data Local polynomial Weighted estimation Block bootstrap 加权最小二乘估计 部分线性模型 板数 非参数回归 局部多项式 模型误差 参数设置 数据模型
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