选择性偏差的最小二乘修正

A Least Squares Correction for Selectivity Bias

Econometrica · 1980
被引 365 · 同刊同年前 9%
人大 A+FT50ABS 4*

中文导读

处理回归模型中因变量缺失值非随机的问题,通过联合建模回归与观测过程,提出最小二乘修正方法,对使用非随机样本的实证研究者有参考价值。

Abstract

WHEN ESTIMATING REGRESSION MODELS it is very nearly always assumed that the sample is random. The recent literature has begun to deal with the problems which arise when estimating a regression model with samples which may not be random. The most general case in which one only has access to a single nonrandom sample has not been addressed since it is a very imposing problem. The case which has been addressed starts with a random sample but considers the problem of missing values for the dependent variable of a regression. If the determination of which values are to be observed is related to the unobservable error term in the regression, then methods such as ordinary least squares are in general inappropriate. By constructing a joint model which represents both the regression model to be estimated and the process determining when the dependent variable is to be observed, some progress can be made towards taking into account nonrandomness for the observed values of the dependent variable. The actual techniques employed fall into two rough groups, full information maximum likelihood models, and limited information methods which are more easily estimated. In the full information category are two methods. One model combines the probit and the normal regression models, and the other combines the Tobit or limited dependent variable model with the normal regression model. The form of the probit regression model is

样本选择偏差最小二乘校正非随机样本回归模型