This paper studies a semiparametric quantile regression model with endogenous variables and random right censoring. The endogeneity issue is solved using instrumental variables. It is assumed that the structural quantile of the logarithm of the outcome variable is linear in the covariates and censoring is independent. The regressors and instruments can be either continuous or discrete. The specification generates a continuum of equations of which the quantile regression coefficients are a solution. Identification is obtained when this system of equations has a unique solution. Our estimation procedure solves an empirical analogue of the system of equations. We derive conditions under which the estimator is asymptotically normal and prove the validity of a bootstrap procedure for inference. The finite sample performance of the approach is evaluated through numerical simulations. An application to the national Job Training Partnership Act study illustrates the method

(2024). Instrumental variable quantile regression under random right censoring [journal article - articolo]. In ECONOMETRICS JOURNAL. Retrieved from https://hdl.handle.net/10446/263271

Instrumental variable quantile regression under random right censoring

Tedesco, Lorenzo;
2024-01-01

Abstract

This paper studies a semiparametric quantile regression model with endogenous variables and random right censoring. The endogeneity issue is solved using instrumental variables. It is assumed that the structural quantile of the logarithm of the outcome variable is linear in the covariates and censoring is independent. The regressors and instruments can be either continuous or discrete. The specification generates a continuum of equations of which the quantile regression coefficients are a solution. Identification is obtained when this system of equations has a unique solution. Our estimation procedure solves an empirical analogue of the system of equations. We derive conditions under which the estimator is asymptotically normal and prove the validity of a bootstrap procedure for inference. The finite sample performance of the approach is evaluated through numerical simulations. An application to the national Job Training Partnership Act study illustrates the method
articolo
2024
Beyhum, Jad; Tedesco, Lorenzo; Van Keilegom, Ingrid
(2024). Instrumental variable quantile regression under random right censoring [journal article - articolo]. In ECONOMETRICS JOURNAL. Retrieved from https://hdl.handle.net/10446/263271
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