Xavier D'Haultfoeuille
ENSAE ParisTech
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Featured researches published by Xavier D'Haultfoeuille.
Econometric Theory | 2013
Xavier D'Haultfoeuille; Arnaud Maurel
It is often believed that without instrument, endogenous sample selection models are identified only if a covariate with a large support is available (see Chamberlain, 1986, and Lewbel, 2007). We propose a new identification strategy mainly based on the condition that the selection variable becomes independent of the covariates when the outcome, not one of the covariates, tends to infinity. No large support on the covariates is required. Moreover, we prove that this condition is testable. We finally show that our strategy can also be applied to the identification of generalized Roy models.
arxiv:econ.EM | 2018
Clement de Chaisemartin; Xavier D'Haultfoeuille
Linear regressions with period and group fixed effects are widely used to estimate treatment effects. We show that they estimate weighted sums of the average treatment effects (ATE) in each group and period, with weights that may be negative. Due to the negative weights, the linear regression coefficient may for instance be negative while all the ATEs are positive. We propose another estimator that solves this issue. In the two applications we revisit, it is significantly different from the linear regression estimator.Linear regressions with period and group fixed effects are widely used to estimate treatment effects. We show that they estimate weighted sums of the average treatment effects (ATE) in each group and period, with weights that may be negative. Due to the negative weights, the linear regression coefficient may for instance be negative while all the ATEs are positive. We propose another estimator that solves this issue. In the two applications we revisit, it is significantly different from the linear regression estimator.
National Bureau of Economic Research | 2014
Xavier D'Haultfoeuille; Arnaud Maurel; Yichong Zhang
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 in explaining the level and evolution of the black-white wage gap.
Archive | 2011
Xavier D'Haultfoeuille; Philippe Février
Archive | 2007
Xavier D'Haultfoeuille; Philippe Février
Archive | 2013
Xavier D'Haultfoeuille; Stefan Hoderlein; Yuya Sasaki
Archive | 2014
Clement de Chaisemartin; Xavier D'Haultfoeuille
Archive | 2011
Xavier D'Haultfoeuille; Philippe Février
Archive | 2013
Xavier D'Haultfoeuille; Isis Durrmeyer; Philippe Février
Archive | 2012
Clement de Chaisemartin; Xavier D'Haultfoeuille