Sample selection models attempt to correct for non-randomly selected data in a two-model hierarchy where, on the first level, a binary selection equation determines whether a particular observation will be available for the second level (outcome equation). If the non-random selection mechanism induced by the selection equation is ignored, the coefficient estimates in the outcome equation may be severely biased. When the selection mechanism leads to many censored observations, few data are available for the estimation of the outcome equation parameters, giving rise to computational difficulties. In this context, the main reference is Greene (2008) who extends the results obtained by Manski and Lerman (1977), and develops an estimator which r...
The problem of specification errors in sample selection models has received considerable attention b...
Non-random sample selection arises when observations do not come from a random sample. Instead, indi...
This paper considers the semiparametric estimation of binary choice sample selection models under a ...
Sample selection models attempt to correct for non-randomly selected data in a two-model hierarchy w...
Estimating treatment effectiveness with sample selection We consider a situation where treatment out...
Sample selection bias plays an important role when estimating the effects of covari-ates on an outco...
Sample selection models are employed when an outcome of interest is observed for a restricted non-ra...
A generalization of the Probit model is presented, with the extended skew-normal cumulative distrib...
Misclassification of a binary response variable and nonrandom sample selection are data issues frequ...
Most empirical work in the social sciences is based on observational data that are often both incomp...
Marketing problems sometimes concern the analysis of dichotomous variables, like for example ``buy''...
When the sample selection probabilities and/or the response probabilities are related to the model d...
We consider a situation where treatment outcome is observed after two stages of selection; first of ...
1I am very grateful to Tony Lancaster for sparking my interest in the topic and providing helpful co...
The problem of specification errors in sample selection models has received considerable attention b...
The problem of specification errors in sample selection models has received considerable attention b...
Non-random sample selection arises when observations do not come from a random sample. Instead, indi...
This paper considers the semiparametric estimation of binary choice sample selection models under a ...
Sample selection models attempt to correct for non-randomly selected data in a two-model hierarchy w...
Estimating treatment effectiveness with sample selection We consider a situation where treatment out...
Sample selection bias plays an important role when estimating the effects of covari-ates on an outco...
Sample selection models are employed when an outcome of interest is observed for a restricted non-ra...
A generalization of the Probit model is presented, with the extended skew-normal cumulative distrib...
Misclassification of a binary response variable and nonrandom sample selection are data issues frequ...
Most empirical work in the social sciences is based on observational data that are often both incomp...
Marketing problems sometimes concern the analysis of dichotomous variables, like for example ``buy''...
When the sample selection probabilities and/or the response probabilities are related to the model d...
We consider a situation where treatment outcome is observed after two stages of selection; first of ...
1I am very grateful to Tony Lancaster for sparking my interest in the topic and providing helpful co...
The problem of specification errors in sample selection models has received considerable attention b...
The problem of specification errors in sample selection models has received considerable attention b...
Non-random sample selection arises when observations do not come from a random sample. Instead, indi...
This paper considers the semiparametric estimation of binary choice sample selection models under a ...