The classic recursive bivariate probit model is of particular interest to researchers since it allows for the estimation of the treatment effect that a binary endogenous variable has on a binary outcome in the presence of unobservables. In this article, the authors consider the semiparametric version of this model and introduce a model fitting procedure which permits to estimate reliably the parameters of a system of two binary outcomes with a binary endogenous regressor and smooth functions of continuous covariates. They illustrate the empirical validity of the proposal through an extensive simulation study. The approach is applied to data from a survey, conducted in Botswana, on the impact of education on women's fertility. Some studies s...
Bivariate probit models can deal with a problem usually known as endogeneity. This issue is likely t...
Description Routine for fitting bivariate probit models with semiparametric predictors (including li...
Bivariate probit models can deal with a problem usually known as endogeneity. This issue is likely t...
The classic recursive bivariate probit model is of particular interest to researchers since it allow...
We consider an extension of the recursive bivariate probit model for estimating the effect of a bina...
Probit models with endogenous regressors are commonly used models in economics and other social scie...
The bivariate probit model is frequently used for estimating the effect of an endogenous binary regr...
This dissertation consists of three stand-alone chapters, each of which investigates a specific endo...
We conduct an extensive Monte Carlo experiment to examine the finite sample properties of maximum-li...
We study the identification and estimation of semiparametric models with mismeasured endogenous regr...
We conduct an extensive Monte Carlo experiment to examine the finite sample properties of maximum-li...
We conduct an extensive Monte Carlo experiment to examine the finite sample properties of maximum-li...
We analyze a semiparametric model for data that suffer from the problems of incidental truncation, w...
Bivariate probit models can deal with a problem usually known as endogeneity. This issue is likely t...
Description Routine for fitting bivariate probit models with semiparametric predictors (including li...
Bivariate probit models can deal with a problem usually known as endogeneity. This issue is likely t...
Description Routine for fitting bivariate probit models with semiparametric predictors (including li...
Bivariate probit models can deal with a problem usually known as endogeneity. This issue is likely t...
The classic recursive bivariate probit model is of particular interest to researchers since it allow...
We consider an extension of the recursive bivariate probit model for estimating the effect of a bina...
Probit models with endogenous regressors are commonly used models in economics and other social scie...
The bivariate probit model is frequently used for estimating the effect of an endogenous binary regr...
This dissertation consists of three stand-alone chapters, each of which investigates a specific endo...
We conduct an extensive Monte Carlo experiment to examine the finite sample properties of maximum-li...
We study the identification and estimation of semiparametric models with mismeasured endogenous regr...
We conduct an extensive Monte Carlo experiment to examine the finite sample properties of maximum-li...
We conduct an extensive Monte Carlo experiment to examine the finite sample properties of maximum-li...
We analyze a semiparametric model for data that suffer from the problems of incidental truncation, w...
Bivariate probit models can deal with a problem usually known as endogeneity. This issue is likely t...
Description Routine for fitting bivariate probit models with semiparametric predictors (including li...
Bivariate probit models can deal with a problem usually known as endogeneity. This issue is likely t...
Description Routine for fitting bivariate probit models with semiparametric predictors (including li...
Bivariate probit models can deal with a problem usually known as endogeneity. This issue is likely t...