We consider the estimation of a semiparametric location-scale model subject to endogenous selection, in the absence of an instrument or a large support regressor. Identification relies on the independence between the covariates and selection, for arbitrarily large values of the outcome. In this context, we propose a simple estimator, which combines extremal quantile regressions with minimum distance. We establish the asymptotic normality of this estimator by extending previous results on extremal quantile regressions to allow for selection. Finally, we apply our method to estimate the black-white wage gap among males from the NLSY79 and NLSY97. We find that premarket factors such as AFQT and family background characteristics play a key role...
Abstract. We present a methodology for estimating the distributional effects of an en-dogenous treat...
This paper proposes a semiparametric estimator of distribution functions in the presence of covariat...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
We consider the estimation of a semiparametric location-scale model subject to endoge-nous selection...
The paper develops a parametric variant of the Machado–Mata simulation methodology to examine quanti...
Arellano and Bonhomme (2017) considered nonparametric identification and semiparametric estimation o...
Estimates of the female-male wage gap may be biased by selection since wages are only observed for t...
We develop a distribution regression model under endogenous sample selection. This model is a semipa...
We propose a semi-parametric least-squares estimator for a censored-selection (type 3 tobit) model u...
This paper proposes an extension of the unconditional quantile regression analysis to (i) location-s...
Several recent papers use the quantile regression decomposition method of Machado and Mata (2005) to...
Several recent papers use the quantile regression decomposition method of Machado and Mata [Machado,...
We develop a fully parametric estimation procedure for unbalanced panel data models with unobserved ...
We consider identification and estimation of nonseparable sample selection models with censored sele...
Let pi(1), pi(2),..., pi(k) be k independent exponential populations, where pi(i) has the unknown lo...
Abstract. We present a methodology for estimating the distributional effects of an en-dogenous treat...
This paper proposes a semiparametric estimator of distribution functions in the presence of covariat...
This paper addresses the problem of estimation of a nonparametric regression function from selective...
We consider the estimation of a semiparametric location-scale model subject to endoge-nous selection...
The paper develops a parametric variant of the Machado–Mata simulation methodology to examine quanti...
Arellano and Bonhomme (2017) considered nonparametric identification and semiparametric estimation o...
Estimates of the female-male wage gap may be biased by selection since wages are only observed for t...
We develop a distribution regression model under endogenous sample selection. This model is a semipa...
We propose a semi-parametric least-squares estimator for a censored-selection (type 3 tobit) model u...
This paper proposes an extension of the unconditional quantile regression analysis to (i) location-s...
Several recent papers use the quantile regression decomposition method of Machado and Mata (2005) to...
Several recent papers use the quantile regression decomposition method of Machado and Mata [Machado,...
We develop a fully parametric estimation procedure for unbalanced panel data models with unobserved ...
We consider identification and estimation of nonseparable sample selection models with censored sele...
Let pi(1), pi(2),..., pi(k) be k independent exponential populations, where pi(i) has the unknown lo...
Abstract. We present a methodology for estimating the distributional effects of an en-dogenous treat...
This paper proposes a semiparametric estimator of distribution functions in the presence of covariat...
This paper addresses the problem of estimation of a nonparametric regression function from selective...