This paper considers estimation of a sample selection model subject to conditional heteroskedasticity in both the selection and outcome equations. The form of heteroskedasticity allowed for in each equation is multiplicative, and each of the two scale functions is left unspecified. A three-step estimator for the parameters of interest in the outcome equation is proposed. The first two stages involve nonparametric estimation of the "propensity score" and the conditional interquartile range of the outcome equation, respectively. The third stage reweights the data so that the conditional expectation of the reweighted dependent variable is of a partially linear form, and the parameters of interest are estimated by an approach analogous to that ...
This paper provides a consistent and asymptotically normal estimator for the intercept of a semipara...
In this paper, we consider estimation of discrete response models exhibiting conditional heteroskeda...
Abstract: We consider a single-index structure to study heteroscedasticity in re-gression with high-...
This paper considers estimation of a sample selection model subject to conditional heteroskedasticit...
This paper considers the semiparametric estimation of binary choice sample selection models under a ...
A semi parametric profile likelihood method is proposed for estimation of sample selection models. ...
International audienceMost of the common estimation methods for sample selection models rely heavily...
Abstract. This paper considers the problem of identification and estimation in panel data sample sel...
This thesis considers the problem of estimating limited dependent variable models when the latent re...
This paper provides a comprehensive summary of the most promising estimation methods for the (dichot...
Sample selection bias plays an important role when estimating the effects of covari-ates on an outco...
Selectivity models usually consist of two equations: a linear and a qualitative variables equation. ...
This paper considers the problem of identifi…cation and estimation in panel-data sample-selection mo...
This paper considers the problem of identi\u85cation and estimation in panel-data sample-selection m...
This thesis considers the problem of estimation in the presence of heteroskedasticity of unknown for...
This paper provides a consistent and asymptotically normal estimator for the intercept of a semipara...
In this paper, we consider estimation of discrete response models exhibiting conditional heteroskeda...
Abstract: We consider a single-index structure to study heteroscedasticity in re-gression with high-...
This paper considers estimation of a sample selection model subject to conditional heteroskedasticit...
This paper considers the semiparametric estimation of binary choice sample selection models under a ...
A semi parametric profile likelihood method is proposed for estimation of sample selection models. ...
International audienceMost of the common estimation methods for sample selection models rely heavily...
Abstract. This paper considers the problem of identification and estimation in panel data sample sel...
This thesis considers the problem of estimating limited dependent variable models when the latent re...
This paper provides a comprehensive summary of the most promising estimation methods for the (dichot...
Sample selection bias plays an important role when estimating the effects of covari-ates on an outco...
Selectivity models usually consist of two equations: a linear and a qualitative variables equation. ...
This paper considers the problem of identifi…cation and estimation in panel-data sample-selection mo...
This paper considers the problem of identi\u85cation and estimation in panel-data sample-selection m...
This thesis considers the problem of estimation in the presence of heteroskedasticity of unknown for...
This paper provides a consistent and asymptotically normal estimator for the intercept of a semipara...
In this paper, we consider estimation of discrete response models exhibiting conditional heteroskeda...
Abstract: We consider a single-index structure to study heteroscedasticity in re-gression with high-...