Semiparametric estimation of a regression model with an unknown transformation of the dependent variable
成果类型:
Article
署名作者:
Horowitz, JL
刊物名称:
ECONOMETRICA
ISSN/ISSBN:
0012-9682
DOI:
10.2307/2171926
发表日期:
1996
页码:
103-137
关键词:
RANK CORRELATION ESTIMATOR
NON-PARAMETRIC ANALYSIS
MULTIPLE-REGRESSION
econometric-models
maximum
摘要:
This paper presents a method for estimating the model Lambda(Y) = beta'X + U, where Y is a scalar, Lambda is an unknown increasing function, X is a vector of explanatory variables, beta is a vector of unknown parameters, and U has unknown cumulative distribution function F. It is not assumed that Lambda and F belong to known parametric families; they are estimated nonparametrically. This model generalizes a large number of widely used models that make stronger a priori assumptions about Lambda and/or F. The paper develops n(1/2)-consistent, asymptotically normal estimators of Lambda, F, and quantiles of the conditional distribution of Y. Estimators of beta that are n(1/2)-consistent and asymptotically normal already exist. The results of Monte Carlo experiments indicate that the new estimators work reasonably well in samples of size 100.