Weighted and two-stage least squares estimation of semiparametric truncated regression models


Autoria(s): Khan, S; Lewbel, A
Data(s)

01/04/2007

Formato

309 - 347

application/pdf

Identificador

Econometric Theory, 2007, 23 (2), pp. 309 - 347

0266-4666

http://hdl.handle.net/10161/2573

1469-4360

Idioma(s)

en_US

Relação

Econometric Theory

10.1017/S0266466607070132

Tipo

Journal Article

Resumo

This paper provides a root-n consistent, asymptotically normal weighted least squares estimator of the coefficients in a truncated regression model. The distribution of the errors is unknown and permits general forms of unknown heteroskedasticity. Also provided is an instrumental variables based two-stage least squares estimator for this model, which can be used when some regressors are endogenous, mismeasured, or otherwise correlated with the errors. A simulation study indicates that the new estimators perform well in finite samples. Our limiting distribution theory includes a new asymptotic trimming result addressing the boundary bias in first-stage density estimation without knowledge of the support boundary. © 2007 Cambridge University Press.