This paper explores the uniformity of inference for parameters of interest in nonlinear models with endogeneity. The notion of uniformity is fundamental in these models because due to potential endogeneity, the behavior of standard estimators of these parameters is shown to vary with where they lie in the parameter space. Consequently, uniform inference becomes nonstandard in a fashion that is loosely analogous to inference complications found in the unit root and weak instruments literature, as well as the models recently studied in Andrews and Cheng (2012a), Andrews and Cheng (2012b) and Chen, Ponomareva, and Tamer (2011). We illustrate this point with two models widely used in empirical work. The first is the standard sample selection mo...
A conversion of standard ordinary least-squares results into inference which is robust under endogen...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
It has long been an area of interest to consider a consistent estimation of nonlinear models with me...
This paper explores the uniformity of inference for parameters of interest in nonlinear models with ...
National audienceThis paper considers endogenous selection models, in particular nonparametric ones....
National audienceThis paper considers endogenous selection models, in particular nonparametric ones....
We propose various semiparametric estimators for nonlinear selection models, where slope and interce...
We propose various semiparametric estimators for nonlinear selection models, where slope and interce...
We propose various semiparametric estimators for nonlinear selection models, where slope and interce...
This paper presents a simple two step estimator for models with censored endogenous regressors and s...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
We provide a generalization of the Anderson-Rubin (AR) procedure for inference on parameters which r...
We provide a generalization of the Anderson-Rubin (AR) procedure for inference on parameters which r...
A conversion of standard ordinary least-squares results into inference which is robust under endogen...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
It has long been an area of interest to consider a consistent estimation of nonlinear models with me...
This paper explores the uniformity of inference for parameters of interest in nonlinear models with ...
National audienceThis paper considers endogenous selection models, in particular nonparametric ones....
National audienceThis paper considers endogenous selection models, in particular nonparametric ones....
We propose various semiparametric estimators for nonlinear selection models, where slope and interce...
We propose various semiparametric estimators for nonlinear selection models, where slope and interce...
We propose various semiparametric estimators for nonlinear selection models, where slope and interce...
This paper presents a simple two step estimator for models with censored endogenous regressors and s...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
We provide a generalization of the Anderson-Rubin (AR) procedure for inference on parameters which r...
We provide a generalization of the Anderson-Rubin (AR) procedure for inference on parameters which r...
A conversion of standard ordinary least-squares results into inference which is robust under endogen...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
It has long been an area of interest to consider a consistent estimation of nonlinear models with me...