含测量误差的非线性模型估计

Estimation of Nonlinear Models with Measurement Error

Econometrica · 2003
被引 257
人大 A+FT50ABS 4*

中文导读

提出一种根号n一致估计量,利用重复观测数据通过傅里叶变换分离测量误差,适用于一般非线性模型,并给出蒙特卡洛证据和恩格尔曲线应用。

Abstract

This paper presents a solution to an important econometric problem, namely the root n consistent estimation of nonlinear models with measurement errors in the explanatory variables, when one repeated observation of each mismeasured regressor is available. While a root n consistent estimator has been derived for polynomial specifications (see Hausman, Ichimura, Newey, and Powell (1991)), such an estimator for general nonlinear specifications has so far not been available. Using the additional information provided by the repeated observation, the suggested estimator separates the measurement error from the "true" value of the regressors thanks to a useful property of the Fourier transform: The Fourier transform converts the integral equations that relate the distribution of the unobserved "true" variables to the observed variables measured with error into algebraic equations. The solution to these equations yields enough information to identify arbitrary moments of the "true, " unobserved variables. The value of these moments can then be used to construct any estimator that can be written in terms of moments, including traditional linear and nonlinear least squares estimators, or general extremum estimators. The proposed estimator is shown to admit a representation in terms of an influence function, thus establishing its root n consistency and asymptotic normality. Monte Carlo evidence and an application to Engel curve estimation illustrate the usefulness of this new approach. Copyright Econometric Society 2004.

非线性模型测量误差傅里叶变换根n一致估计