一类改进的参数引导非参数回归估计量

A Class of Improved Parametrically Guided Nonparametric Regression Estimators

Econometric Reviews · 2008
被引 36
人大 A-ABS 3

中文导读

提出一类新的非参数回归估计量,通过两阶段过程减少偏差,第一阶段估计可能错误设定的参数模型,第二阶段用参数估计引导半参数估计,并证明其渐近正态性。

Abstract

In this article we define a class of estimators for a nonparametric regression model with the aim of reducing bias. The estimators in the class are obtained via a simple two-stage procedure. In the first stage, a potentially misspecified parametric model is estimated and in the second stage the parametric estimate is used to guide the derivation of a final semiparametric estimator. Mathematically, the proposed estimators can be thought as the minimization of a suitably defined Cressie–Read discrepancy that can be shown to produce conventional nonparametric estimators, such as the local polynomial estimator, as well as existing two-stage multiplicative estimators, such as that proposed by Glad (1998 Glad , I. ( 1998 ). Parametrically guided non-parametric regression . Scandinavian Journal of Statistics 25 : 649 – 668 .[Crossref], [Web of Science ®] , [Google Scholar]). We show that under fairly mild conditions the estimators in the proposed class are asymptotically normal and explore their finite sample (simulation) behavior.

非参数回归参数引导估计偏差校正半参数估计